Increasing Market and Planning Efficiency through Improved Software; Second Supplemental Notice of Technical Conference on Increasing Real-Time and Day-Ahead Market and Planning Efficiency Through Improved Software, 40234-40253 [2023-13168]
Download as PDF
lotter on DSK11XQN23PROD with NOTICES1
40234
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
It also helps the public understand the
Department’s information collection
requirements and provide the requested
data in the desired format. The
Department is soliciting comments on
the proposed information collection
request (ICR) that is described below.
The Department is especially interested
in public comment addressing the
following issues: (1) is this collection
necessary to the proper functions of the
Department; (2) will this information be
processed and used in a timely manner;
(3) is the estimate of burden accurate;
(4) how might the Department enhance
the quality, utility, and clarity of the
information to be collected; and (5) how
might the Department minimize the
burden of this collection on the
respondents, including through the use
of information technology. Please note
that written comments received in
response to this notice will be
considered public records.
Title of Collection: Nondiscrimination
on the Basis of Sex in Education
Programs or Activities Receiving
Federal Financial Assistance.
OMB Control Number: 1870–0505.
Type of Review: A revision of a
currently approved ICR.
Respondents/Affected Public: Private
Sector; State, Local, and Tribal
Governments.
Total Estimated Number of Annual
Responses: 24,785.
Total Estimated Number of Annual
Burden Hours: 598,982.
Abstract: The U.S. Department of
Education (the Department) published a
Notice of Proposed Rulemaking for the
Nondiscrimination on the Basis of Sex
in Education Programs or Activities
Receiving Federal Financial Assistance
(title IX NPRM) to propose amendments
to the Department’s implementing
regulations for title IX of the Education
Amendments of 1972. The Department’s
proposed regulations would require a
recipient to maintain various documents
regarding its title IX activities for a
period of at least seven years. These
requirements are specified in proposed
34 CFR 106.8(f). Recipients impacted by
the proposed regulations include local
educational agencies, institutes of
higher education and other entities that
receive Federal grant funds from the
Department. The information collected
would allow recipients and the
Department to assess on a longitudinal
basis whether a recipient is complying
with the Department’s title IX
regulations when it is has information
about sex discrimination, the prevalence
of sex discrimination affecting access to
a recipient’s education program or
activity, and whether additional or
different training is necessary for the
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
recipient to fulfill its obligations under
title IX.
Dated: June 15, 2023.
Stephanie Valentine,
PRA Coordinator, Strategic Collections and
Clearance, Governance and Strategy Division,
Office of Chief Data Officer, Office of
Planning, Evaluation and Policy
Development.
[FR Doc. 2023–13181 Filed 6–20–23; 8:45 am]
BILLING CODE 4000–01–P
DEPARTMENT OF ENERGY
Environmental Management SiteSpecific Advisory Board, Northern New
Mexico
Office of Environmental
Management, Department of Energy.
ACTION: Notice of open meeting.
AGENCY:
This notice announces an inperson/virtual hybrid open meeting of
the Environmental Management SiteSpecific Advisory Board (EM SSAB),
Northern New Mexico. The Federal
Advisory Committee Act requires that
public notice of this meeting be
announced in the Federal Register.
DATES: Wednesday, July 19, 2023; 1 to
5 p.m. MDT.
ADDRESSES: This hybrid meeting will be
open to the public in person and via
WebEx. To attend virtually, please
contact the Northern New Mexico
Citizens Advisory Board (NNMCAB)
Executive Director (below) no later than
5 p.m. MDT on Friday, July 14, 2023.
Cities of Gold Hotel, Tribal Room, 10
Cities of Gold Road, Santa Fe, NM
87506.
SUMMARY:
FOR FURTHER INFORMATION CONTACT:
Menice B. Santistevan, NNMCAB
Executive Director, by Phone: (505)
699–0631 or Email:
menice.santistevan@em.doe.gov.
SUPPLEMENTARY INFORMATION:
Purpose of the Board: The purpose of
the Board is to provide advice and
recommendations concerning the
following EM site-specific issues: cleanup activities and environmental
restoration; waste and nuclear materials
management and disposition; excess
facilities; future land use and long-term
stewardship. The Board may also be
asked to provide advice and
recommendations on any EM program
components.
Tentative Agenda:
• Surface Water and Storm Water
Monitoring Presentation
• Agency Updates
Public Participation: The in-person/
online virtual hybrid meeting is open to
PO 00000
Frm 00042
Fmt 4703
Sfmt 4703
the public in person or virtually, via
WebEx. Written statements may be filed
with the Board no later than 5 p.m.
MDT on Friday, July 14, 2023, or within
seven days after the meeting by sending
them to the NNMCAB Executive
Director at the aforementioned email
address. Written public comments
received prior to the meeting will be
read into the record. The Deputy
Designated Federal Officer is
empowered to conduct the meeting in a
fashion that will facilitate the orderly
conduct of business. Individuals
wishing to submit public comments
should follow as directed above.
Minutes: Minutes will be available by
emailing or calling Menice Santistevan,
NNMCAB Executive Director, at
menice.santistevan@em.doe.gov or at
(505) 699–0631.
Signed in Washington, DC, on June 14,
2023.
LaTanya Butler,
Deputy Committee Management Officer.
[FR Doc. 2023–13111 Filed 6–20–23; 8:45 am]
BILLING CODE 6450–01–P
DEPARTMENT OF ENERGY
Federal Energy Regulatory
Commission
[Docket No. AD10–12–014]
Increasing Market and Planning
Efficiency through Improved Software;
Second Supplemental Notice of
Technical Conference on Increasing
Real-Time and Day-Ahead Market and
Planning Efficiency Through Improved
Software
As first announced in the Notice of
Technical Conference issued in this
proceeding on February 7, 2023,
Commission staff will convene a
technical conference on June 27, 28, and
29, 2023 to discuss opportunities for
increasing real-time and day-ahead
market and planning efficiency of the
bulk power system through improved
software. Attached to this Second
Supplemental Notice is the agenda for
the technical conference and speakers’
summaries of their presentations.
While the intent of the technical
conference is not to focus on any
specific matters before the Commission,
some conference discussions might
include topics at issue in proceedings
that are currently pending before the
Commission, including topics related to
capacity valuation methodologies for
renewable, hybrid, or storage resources.
These proceedings include, but are not
limited to:
E:\FR\FM\21JNN1.SGM
21JNN1
PJM Interconnection, L.L.C., Docket No.
EL21–83–000
California Independent System Operator
Corp., Docket No. ER21–2455–004
New York Independent System
Operator, Inc., Docket No. ER21–
2460–003
ISO New England, Inc., Docket No.
ER22–983–002
PJM Interconnection, L.L.C., Docket No.
ER22–962–003
Southwest Power Pool, Inc., Docket No.
ER22–1697–001
Midcontinent Independent System
Operator, Inc., Docket No. ER22–
1640–000
ISO New England, Inc., Docket No.
EL22–42–000
Southwest Power Pool, Inc., Docket No.
ER22–379–000
PJM Interconnection, L.L.C., Docket No.
ER22–1200–000
California Independent System Operator
Corp., Docket No. ER23–1485–000
California Independent System Operator
Corp., Docket No. ER23–1533–000
California Independent System Operator
Corp., Docket No. ER23–1534–000
Midcontinent Independent System
Operator, Inc., Docket No. EL23–28
Midcontinent Independent System
Operator, Inc., Docket No. ER23–1195
Midcontinent Independent System
Operator, Inc., Docket No. EL23–46
The conference will take place in a
hybrid format, with presenters and
attendees allowed to participate either
in-person or virtually. Further details on
both in-person and virtual participation
will be available on the conference web
page.1 Foreign nationals attending inperson must register through the
Commission’s website on or before June
2, 2023. We also encourage all other inperson attendees to also register through
the Commission’s website on or before
June 2, 2023, to help ensure
Commission staff can provide sufficient
physical and virtual facilities and to
communicate with attendees in the case
of unanticipated emergencies or other
changes to the conference schedule or
location. Access to the conference
(virtual or in-person) may not be
available to those who do not register.
The Commission will accept
comments following the conference,
with a deadline of July 28, 2023.
There is an ‘‘eSubscription’’ link on
the Commission’s website that enables
subscribers to receive email notification
when a document is added to a
subscribed docket(s). For assistance
with any FERC Online service, please
email FERCOnlineSupport@ferc.gov, or
1 https://www.ferc.gov/news-events/events/
increasing-real-time-and-day-ahead-market-andplanning-efficiency-through.
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
call (866) 208–3676 (toll free). For TTY,
call (202) 502–8659.
FERC conferences are accessible
under section 508 of the Rehabilitation
Act of 1973. For accessibility
accommodations please send an email
to accessibility@ferc.gov or call toll free
(866) 208–3372 (voice) or (202) 502–
8659 (TTY), or send a fax to (202) 208–
2106 with the required
accommodations.
For further information about these
conferences, please contact:
Sarah McKinley (Logistical
Information), Office of External
Affairs, (202) 502–8004,
Sarah.McKinley@ferc.gov
Alexander Smith (Technical
Information), Office of Energy Policy
and Innovation, (202) 502–6601,
Alexander.Smith@ferc.gov
Dated: June 14, 2023.
Debbie-Anne A. Reese,
Deputy Secretary.
Juan Carlos Martin, EPRI (Madrid,
Spain)
Transmission Outage Probability
Estimation Based on Real-Time
Weather Forecast
Mingguo Hong, ISO New England
(Holyoke, MA)
Xiaochuan Luo, ISO New England
(Holyoke, MA)
Slava Maslennikov, ISO New England
(Holyoke, MA)
Tongxin Zheng, ISO New England
(Holyoke, MA)
Overview of MISO and PJM Hybrid
Multiple Configuration Resource
Model Implementation Within
PROBE Software
Qun Gu, PowerGEM (Clifton Park,
NY)
Boris Gisin, PowerGEM (Clifton Park,
NY)
Anthony Giacomoni, PJM
Interconnection (Audubon, PA)
Chuck Hansen, Midcontinent ISO
(Carmel, IN)
Optimizing Combined Cycle Units in
PJM’s Wholesale Energy Markets
using a Hybrid Multiple
Configuration Resource Model
Anthony Giacomoni, PJM
Interconnection (Audubon, PA)
Danial Nazemi, PJM Interconnection
(Audubon, PA)
Qun Gu, PowerGEM (Clifton Park,
NY)
Boris Gisin, PowerGEM (Clifton Park,
NY)
11:30 a.m.
Technical Conference: Increasing RealTime and Day-Ahead Market Efficiency
Through Improved Software
Agenda
AD10–12–014
June 27–29, 2023
Tuesday, June 27, 2023
9:15 a.m.
Introduction
Elizabeth Topping, Federal Energy
Regulatory Commission
(Washington, DC)
9:30 a.m. Session T1 (Commission
Meeting Room)
Probabilistic Energy Adequacy
Assessment under Extreme Weather
Events
Jinye Zhao, ISO New England
(Holyoke, MA)
Stephen George, ISO New England
(Holyoke, MA)
Ke Ma, ISO New England (Holyoke,
MA)
Steven Judd, ISO New England
(Holyoke, MA)
Eamonn Lannoye, EPRI (Dublin,
Ireland)
PO 00000
Frm 00043
Fmt 4703
Sfmt 4703
40235
Lunch
12:30 p.m. Session T2 (Commission
Meeting Room)
Enhancements to Ramp Rate Dependent
Spinning Reserve Modeling
Shubo Zhang, New York ISO
(Rensselaer, NY)
John L. Meyer, New York ISO
(Rensselaer, NY)
Iiro Harjunkoski, Hitachi Energy
(Mannheim, Germany)
Determining Dynamic Operating
Reserve Requirements for
Reliability and Efficient Market
Outcomes: Tradeoffs and Price
Formation Challenges
Matthew Musto, New York ISO
(Rensselaer, NY)
Kanchan Upadhyay, New York ISO
(Rensselaer, NY)
Edward O Lo, Hitachi Energy (San
Jose, CA)
Operational Experience with Nodal
Procurement of Flexible Ramping
Product
Guillermo Bautista-Alderete,
California ISO (Folsom, CA)
George Angelidis, California ISO
(Folsom, CA)
Yu Wan, California ISO (Folsom, CA)
E:\FR\FM\21JNN1.SGM
21JNN1
EN21JN23.069
lotter on DSK11XQN23PROD with NOTICES1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
40236
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Kun Zhao, California ISO (Folsom,
CA)
Impact of DERs on Load Distribution
Factors in Forecasting
Khaled Abdul-Rahman, California ISO
(Folsom, CA)
Hani Alarian, California ISO (Folsom,
CA)
Trevor Ludlow, California ISO
(Folsom, CA)
Chiranjeevi Madvesh, California ISO
(Folsom, CA)
Increased Congestion in SPP and
Optimization in the Day Ahead
Market with Gurobi
Seth Mayfield, Southwest Power Pool
(Little Rock, AR)
Yasser Bahbaz, Southwest Power Pool
(Little Rock, AR)
3:00 p.m.
Break
lotter on DSK11XQN23PROD with NOTICES1
3:30 p.m. Session T3 (Commission
Meeting Room)
MISO Operations Risk Assessment and
Uncertainty Management
Congcong Wang, Midcontinent ISO
(Carmel, IN)
Long Zhao, Midcontinent ISO
(Carmel, IN)
Jason Howard, Midcontinent ISO
(Carmel, IN)
Market Simulation Tools and
Uncertainty Quantification Methods
to Support Operational Uncertainty
Management
Nazif Faqiry, Midcontinent ISO
(Carmel, IN)
Arezou Ghesmati, Midcontinent ISO
(Carmel, IN)
Bing Huang, Midcontinent ISO
(Carmel, IN)
Yonghong Chen, Midcontinent ISO
(Carmel, IN)
Bernard Knueven, National
Renewable Energy Laboratory
(Golden, CO)
Pumped Storage Optimization in Realtime Markets under Uncertainty
Bing Huang, Midcontinent ISO
(Carmel, IN)
Arezou Ghesmati, Midcontinent ISO
(Carmel, IN)
Yonghong Chen, Midcontinent ISO
(Carmel, IN)
Ross Baldick, University of Texas at
Austin (Austin, TX)
Forecasting Aggregate Electricity
Demand on a 5-minute Basis using
Machine Learning
Yinghua Wu, PJM Interconnection
(Audubon, PA)
Laura Walter, PJM Interconnection
(Audubon, PA)
Anthony Giacomoni, PJM
Interconnection (Audubon, PA)
Long-Term Outlook for the ERCOT Grid
Pengwei Du, Electric Reliability
Corporation of Texas (Austin, TX)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
6:00 p.m.
Adjourn
Wednesday, June 28, 2023
9:00 a.m. Session W–A1 (Commission
Meeting Room)
Uncertainty-Informed Renewable
Energy Scheduling: A Scalable
Bilevel Framework
Dongwei Zhao, Massachusetts
Institute of Technology (Cambridge,
MA)
Vladimir Dvorkin, Massachusetts
Institute of Technology (Cambridge,
MA)
Stefanos Delikaraoglou, Axpo
Solutions AG (Zurich, Switzerland)
Alberto J. Lamadrid L., Lehigh
University (Bethlehem, PA)
Audun Botterud, Massachusetts
Institute of Technology (Cambridge,
MA)
Enhancing Power System Resilience and
Efficiency through Proactive
Security Assessments and the Use
of powerSAS.m: A Robust,
Efficient, and Scalable Security
Analysis Tool for Large-Scale
Systems
Yang Liu, Argonne National
Laboratory (Lemont, IL)
Feng Qiu, Argonne National
Laboratory (Lemont, IL)
Jianzhe Liu, Argonne National
Laboratory (Lemont, IL)
Stochastic Unit Commitment and
Market Clearing in Julia with
UnitCommitment.jl
Alinson Santos Xavier, Argonne
National Laboratory (Lemont, IL)
Ogu¨n Yurdakul, Technische
Universita¨t Berlin (Berlin, Germany)
Aleksandr M. Kazachkov, University
of Florida (Gainesville, FL)
Jun He, Purdue University (West
Lafayette, IN)
Feng Qiu, Argonne National
Laboratory (Lemont, IL)
Reduced-order Decomposition and
Coordination Approach for Markovbased Stochastic UC with High
Penetration Level of Wind and
BESS
Niranjan Raghunathan, University of
Connecticut (Storrs, CT)
Peter B. Luh, University of
Connecticut and National Taiwan
University (Alexandria, VA)
Zongjie Wang, University of
Connecticut (Storrs, CT)
Mikhail A. Bragin, University of
California, Riverside (Riverside, CA)
Bing Yan, Rochester Institute of
Technology (Rochester, NY)
Meng Yue, Brookhaven National
Laboratories (Upton, NY)
Tianqiao Zhao, Brookhaven National
Laboratories, (Upton, NY)
Learn to Branch and Dive for Large-scale
Unit Commitment Problem
PO 00000
Frm 00044
Fmt 4703
Sfmt 4703
Jingtao Qin, University of California,
Riverside (Riverside, CA)
Nanpeng Yu, University of California,
Riverside (Riverside, CA)
Mikhail Bragin, University of
Connecticut (Storrs, CT)
9:00 a.m. Session W–B1 (Hearing
Room One)
Stochastic Nodal Adequacy Pricing
Platform (SNAP)
Richard D. Tabors, Tabors Caramanis
Rudkevich (Newton, MA)
Aleksandr Rudkevich, Newton Energy
Group (Newton, MA)
Russel Philbrick, Polaris Systems
Optimization (Seattle, WA)
Selin Yanikara, Newton Energy Group
(Newton, MA)
Assessing Nodal Adequacy of Large
Power Systems
F. Selin Yanikara, Newton Energy
Group (Newton, MA)
Russ Philbrick, Polaris Systems
Optimization (Seattle, WA)
Aleksandr M. Rudkevich, Newton
Energy Group (Newton, MA)
Sophie Edelman, The Brattle Group
(New York, NY)
Comparison of Flexibility Reserve and
ORDC for Increasing System
Flexibility
Phillip de Mello, Electric Power
Research Institute (Niskayuna, NY)
Erik Ela, Electric Power Research
Institute (Boulder, CO)
Nikita Singhal, Electric Power
Research Institute (Palo Alto, CA)
Alexandre Moreira da Silva, Lawrence
Berkeley National Laboratory
(Berkeley, CA)
Miguel Heleno, Lawrence Berkeley
National Laboratory (Berkeley, CA)
ABSCORES, A Novel Application of
Banking Scoring and Rating for
Electricity Systems
Alberto J. Lamadrid L., Lehigh
University (Bethlehem, PA)
Audun Botterud, Massachusetts
Institute of Technology (Cambridge,
MA)
Jhi-Young Joo, Lawrence Livermore
National Laboratory (Livermore,
CA)
Shijia Zhao, Argonne National
Laboratory (Lemont, IL)
Recent Developments in the Day-ahead
and Real-time Electricity Market
Design and Software Caused by the
Higher Energy Costs and Emerging
Technologies—European
Experience
Petr Svoboda, Unicorn Systems A.S.
(Prague, Czech Republic)
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
11:30 a.m.
Lunch
12:30 p.m. Session W–A2
(Commission Meeting Room)
lotter on DSK11XQN23PROD with NOTICES1
System Resilience through Electricity
System Restoration and Related
Services
Douglas Wilson, General Electric
(Edinburgh, United Kingdom)
James Yu, ScottishPower Energy
Networks (Glasgow, United
Kingdom)
Ian Macpherson, ScottishPower
Energy Networks (Glasgow, United
Kingdom)
Marta Laterza, General Electric
(Glasgow, United Kingdom)
Marcos Santos, General Electric
(Glasgow, United Kingdom)
Richard Davey, General Electric
(Glasgow, United Kingdom)
Coordinated Cross-Border Capacity
Calculation Through The FARAO
Open-Source Toolbox
Violette Berge, Artelys Canada
(Montre´al, Canada)
Nicolas Omont, Artelys (Paris,
France)
Advanced Scenario Selection Methods
for Probabilistic Transmission
Planning Assessments
Eknath Vittal, Electric Power Research
Institute (Palo Alto, CA)
Anish Gaikwad, Electric Power
Research Institute (Palo Alto, CA)
Parag Mitra, Electric Power Research
Institute (Palo Alto, CA)
Incorporating Climate Projections into
Grid Models: Bridging the Data Gap
to Capture Weather Dependent
Representative and Extreme Events
and Corresponding Uncertainties
Zhi Zhou, Argonne National
Laboratory (Lemont, IL)
Neal Mann, Argonne National
Laboratory (Lemont, IL)
Yanwen Xu, University of Illinois at
Chicago, Urbana-Champaign
(Champaign, IL)
Zuguang Gao, University of Chicago
(Chicago, IL)
Akintomide Akinsanola, University of
Illinois at Chicago (Chicago, IL)
Todd Levin, Argonne National
Laboratory (Lemont, IL)
Jonghwan Kwon, Argonne National
Laboratory (Lemont, IL)
Audun Botterud, Senior Energy
Systems Engineer, Argonne
National Laboratory (Lemont, IL)
12:30 p.m. Session W–B2 (Hearing
Room One)
Enhancing Decision Support for
Electricity Markets with Machine
Learning
Yury Dvorkin, Johns Hopkins
University (Baltimore, MD)
Robert Ferrando, University of
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Arizona (Tucson, AZ)
Laurent Pagnier, University of
Arizona (Tucson, AZ)
Zhirui Liang, Johns Hopkins
University (Baltimore, MD)
Daniel Bienstock, Columbia
University (New York, NY)
Michael Chertkov, University of
Arizona (Tucson, AZ)
Boosting Power System Operation
Economics via Closed-loop Predictand-Optimize
Lei Wu, Stevens Institute of
Technology (Hoboken, NJ)
Xianbang Chen, Stevens Institute of
Technology (Hoboken, NJ)
Synergistic Integration of Machine
Learning and Mathematical
Optimization for Sub-hourly Unit
Commitment
Jianghua Wu, University of
Connecticut (Storrs, CT)
Zongjie Wang, University of
Connecticut (Storrs, CT)
Yonghong Chen, MIDCONTINENT
ISO (Carmel, IN)
Bing Yan, Rochester Institute of
Technology (Rochester, NY)
Mikhail Bragin, University of
California, Riverside (Riverside, CA)
Privacy-Preserving Synthetic Dataset
Generation for Power Systems
Research
Vladimir Dvorkin, Massachusetts
Institute of Technology (Cambridge,
MA)
Audun Botterud, Massachusetts
Institute of Technology (Cambridge,
MA)
2:30 p.m.
Break
3:00 p.m. Session W–A3 (Commission
Meeting Room)
Parallel Interior-Point Solver for
Security Constrained ACOPF
problems on SIMD/GPU
Architectures
Mihai Anitescu, Argonne National
Laboratory (Lemont, IL)
Franc¸ois Pacaud, Ecole des Mines
(Paris, France)
Michel Schanen, Argonne National
Laboratory (Lemont, IL)
Sungho Shin, Argonne National
Laboratory (Lemont, IL)
Daniel Adrian Maldonado, Argonne
National Laboratory (Lemont, IL)
The Need for More Rigorous Calculation
of Shadow Prices and LMPs
Xiaoming Feng, Hitachi Energy
(Raleigh, NC)
Real-Time Market Enhancements for
Reliability and Efficiency
Mort Webster, Pennsylvania State
University (University Park, PA)
Anthony Giacomoni, PJM
Interconnection (Audubon, PA)
Aravind Retna Kumar, Pennsylvania
PO 00000
Frm 00045
Fmt 4703
Sfmt 4703
40237
State University (University Park,
PA)
Sushant Varghese, Pennsylvania State
University (University Park, PA)
Shailesh Wasti, Pennsylvania State
University (University Park, PA)
Economics of Grid-Supported Electric
Power Markets: A Fundamental
Reconsideration
Leigh Tesfatsion, Iowa State
University (Ames, IA)
3:00 p.m. Session W–B3 (Hearing
Room One)
Simulation of Wholesale Electricity
Markets with Capacity Expansion
and Production Cost Models to
Understand Feedback between
Short-Term Market Procedures and
Long-Term Investment Incentives
Jesse Holzer, Pacific Northwest
National Laboratory (Richland, WA)
Abhishek Somani, Pacific Northwest
National Laboratory (Richland, WA)
Brent Eldridge, Pacific Northwest
National Laboratory (Bel Air, MD)
Diane Baldwin, Pacific Northwest
National Laboratory (Richland, WA)
Making the Right Resource Choice
Requires Making the Right Model
Choice
Rodney Kizito, Ascend Analytics
(Wheaton, MD)
Gary W. Dorris, Ascend Analytics,
CEO (Boulder, CO)
David Millar, Ascend Analytics
(Boulder, CO)
Transmission Shortage Pricing By MWMile Based Demand Curve
Sina Gharebaghi, Pennsylvania State
University (University Park, PA)
Xiaoming Feng, Hitachi Energy
(Raleigh, NC)
Grid OS—A Modern Software Portfolio
for Grid Orchestration
Renan Giovanini, General Electric
(Edinburgh, UK)
Joseph Franz, General Electric
(Melbourne, FL)
5:00 p.m.
Adjourn
Thursday, June 29, 2023
9:30 a.m. Session H1 (Commission
Meeting Room)
Integration of DER Aggregations in ISOScale SCUC Models
Brent Eldridge, Pacific Northwest
National Laboratory (Bel Air, MD)
Jesse Holzer, Pacific Northwest
National Laboratory (Richland, WA)
Abhishek Somani, Pacific Northwest
National Laboratory (Richland, WA)
Eran Schweitzer, Pacific Northwest
National Laboratory (Richland, WA)
Rabayet Sadnan, Pacific Northwest
National Laboratory (Richland, WA)
Nawaf Nazir, Pacific Northwest
National Laboratory (Richland, WA)
E:\FR\FM\21JNN1.SGM
21JNN1
40238
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Soumya Kundu, Pacific Northwest
National Laboratory (Richland, WA)
Current-Voltage AC Optimal Power
Flow for Unbalanced Distribution
Network
Mojdeh Khorsand Hedman, Arizona
State University (Tempe, AZ)
Zahra Soltani, Arizona State
University (Tempe, AZ)
Shanshan Ma, Arizona State
University (Las Vegas, NV)
Empowering Electricity Markets through
Distributed Energy Resources and
Smart Building Setpoint
Optimization: A Graph Neural
Network-Based Deep Reinforcement
Learning Approach
You Lin, Massachusetts Institute of
Technology (Cambridge, MA)
Audun Botterud, Massachusetts
Institute of Technology (Cambridge,
MA)
Daisy Green, Massachusetts Institute
of Technology (Cambridge, MA)
Leslie Norford, Massachusetts
Institute of Technology (Cambridge,
MA)
Jeremy Gregory, Massachusetts
Institute of Technology (Cambridge,
MA)
Multi-timescale Operations of NuclearRenewable Hybrid Energy Systems
for Reserve and Thermal Products
Provision
Jie Zhang, University of Texas at
Dallas (Richardson, TX)
Jubeyer Rahman, University of Texas
at Dallas (Richardson, TX)
11:30 a.m.
Lunch
lotter on DSK11XQN23PROD with NOTICES1
12:30 p.m. Session H2 (Commission
Meeting Room)
Optimizing Stand-Alone Battery Storage
Operations Scheduling Under
Uncertainties in German
Residential Electricity Market Using
Stochastic Dual Dynamic
Programming
Pattanun Chanpiwat, University of
Maryland & Aalto University
(College Park, MD; Espoo, Finland)
Fabricio Oliveira, Aalto University
(Espoo, Finland)
Steven A. Gabriel, University of
Maryland (College Park, MD)
Integration of Hybrid Storage Resources
into Wholesale Electricity Markets
Nikita Singhal, Electric Power
Research Institute (Palo Alto, CA)
Rajni Kant Bansal, Johns Hopkins
University (Baltimore, MD)
Erik Ela, Electric Power Research
Institute (Palo Alto, CA)
Julie Mulvaney Kemp, Lawrence
Berkeley National Laboratory
(Berkeley, CA)
Miguel Heleno, Lawrence Berkeley
National Laboratory (Berkeley, CA)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Predicting Strategic Energy Storage
Behaviors
Yuexin Bian, University of California
(San Diego, CA)
Ningkun Zheng, Columbia University
(New York City, NY)
Yang Zheng, University of
California—San Diego (San Diego,
CA)
Bolun Xu, Columbia University (New
York, NY)
Yuanyuan Shi, University of
California—San Diego (San Diego,
CA)
Energy Storage Participation Algorithm
Competition (ESPA-Comp)
Brent Eldridge, Pacific Northwest
National Laboratory (Bel Air, MD)
Jesse Holzer, Pacific Northwest
National Laboratory (r)
Abhishek Somani, Pacific Northwest
National Laboratory (Richland, WA)
Kostas Oikonomou, Pacific Northwest
National Laboratory (Richland, WA)
Brittany Tarufelli, Pacific Northwest
National Laboratory (Laramie, WY)
Li He, Pacific Northwest National
Laboratory (Richland, WA)
2:30 p.m. Break
3:00 p.m. Session H3 (Commission
Meeting Room)
Congestion Mitigation with
Transmission Reconfigurations in
the Evergy Footprint
Pablo A. Ruiz, NewGrid (Somerville,
MA)
Derek Brown, Evergy (Topeka, KS)
Jeremy Harris, Evergy (Topeka, KS)
German Lorenzon, NewGrid
(Somerville, MA)
Grant Wilkerson, Evergy (Kansas City,
MO)
Optimal Transmission Expansion
Planning with Grid Enhancing
Technologies
Swaroop Srinivasrao Guggilam,
Electric Power Research Institute
(Knoxville, TN)
Alberto Del Rosso, Electric Power
Research Institute (Knoxville, TN)
The Key Role of Extended ACOPF-based
Decision Making for Supporting
Clean, Cost-Effective and Reliable/
Resilient Electricity Services
Maria Ilic, Carnegie Mellon University
(Pittsburgh, PA)
Rupamathi Jaddivada, SmartGridz
(Boston, MA)
Jeffrey Lang, Massachusetts Institute
of Technology (Cambridge, MA)
Eric Allen, SmartGridz (Boston, MA)
Data & API Standards for Clean Energy
Solutions and Digital Innovation
Priya Barua, Clean Energy Buyers
Institute (Washington, DC)
Ben Gerber, M–RETS (Minneapolis,
MN)
PO 00000
Frm 00046
Fmt 4703
Sfmt 4703
Mine Production Scheduling under
Time-of-Use Power Rates with
Renewable Energy Sources
Daniel Bienstock, Columbia
University (New York, NY)
Amy Mcbrayer, South Dakota School
of Mines (Rapid City, SD)
Andrea Brickey, South Dakota School
of Mines (Rapid City, SD)
Alexandra Newman, Colorado School
of Mines (Golden, CO)
5:30 p.m. Adjourn
Conference Abstracts
Day 1—Tuesday, June 27
Session T1 (Tuesday, June 27, 9:30 a.m.)
Commission Meeting Room
Probabilistic Energy Adequacy
Assessment Under Extreme Weather
Events
Dr. Jinye Zhao, Technical Manager, ISO
New England (Holyoke, MA)
Stephen George, Director, ISO New
England (Holyoke, MA)
Dr. Ke Ma, Senior Analyst, ISO New
England (Holyoke, MA)
Steven Judd, Manager, ISO New
England (Holyoke, MA)
Dr. Eamonn Lannoye, Program Manager,
Electric Power Research Institute
(Dublin, Ireland)
Juan Carlos Martin, Senior Engineer,
Electric Power Research Institute
(Madrid, Spain)
As intermittent and limited energy
resources become a larger portion of the
region’s generation resource mix, and as
the region’s demand becomes
increasingly electrified, it has become
increasingly important to understand
the operational risks associated with
future weather extremes. To better
inform the region’s understanding of
these risks, ISO New England in
collaboration with EPRI, has developed
a probabilistic energy adequacy
assessment framework. This approach of
stress testing the system’s energy
adequacy focuses on generating
comprehensive extreme weather
scenarios for the New England region
and performing risk analyses across
these scenarios. The framework offers a
tailored approach to identify unique
energy adequacy risks faced by the New
England power system and enables us to
analyze related stressors under extreme
events.
Transmission Outage Probability
Estimation Based on Real-Time Weather
Forecast
Dr. Mingguo Hong, Principal Analyst,
ISO New England (Holyoke, MA)
Dr. Xiaochuan Luo, Manager, ISO New
England (Holyoke, MA)
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Dr. Slava Maslennikov, Technical
Manager, ISO New England (Holyoke,
MA)
Dr. Tongxin Zheng, Director, ISO New
England (Holyoke, MA)
Extreme weather patterns including
both winter and summer storms have
been posing increasing threats to power
transmission security in the New
England area. Being able to accurately
predict their impacts will benefit both
power system operation and planning.
In recent years, the ISO New England
has been developing machine-learning
algorithms for estimating the probability
of transmission line outage in real-time,
given weather forecast variables such as
wind, temperature, snow, and rain
precipitation, etc. This presentation will
share our study findings and on-going
software implementation experience.
lotter on DSK11XQN23PROD with NOTICES1
Overview of MISO and PJM Hybrid
Multiple Configuration Resource Model
Implementation Within PROBE
Software
Dr. Anthony Giacomoni, Manager,
Advanced Analytics, PJM
Interconnection (Audubon, PA)
Dr. Danial Nazemi, Operations Research
Engineer II, PJM Interconnection
(Audubon, PA)
Dr. Qun Gu, Principal Consultant,
PowerGEM (Clifton Park, NY)
Dr. Boris Gisin, President, PowerGEM
(Clifton Park, NY)
For the past three years, PJM, MISO
and PowerGEM have been working
jointly on developing an advanced
SCUC algorithm to prepare for the fullscale implementation of a Multiple
Configuration Resource (MCR) model in
their energy markets. PJM currently uses
aggregate models for MCRs that do not
accurately capture their true operating
characteristics. Often MCRs may need to
overestimate costs to ensure cost
recovery, underestimate costs to ensure
selection or offer reduced operating
ranges to be able to accurately reflect
their operating capabilities. This
presentation will focus on the impacts
to PJM’s energy markets from
optimizing the multiple configurations
and components of their combined
cycle units. The optimization of
multiple configurations and
components is very challenging due to
the additional integer variables and
constraints that impact the solution time
and may lead to performance
challenges. A prototype full-scale MCR
model has been implemented in the
PROBE Day-Ahead software, which is
currently a critical component of PJM’s
Day-Ahead Market (DAM) clearing
process. The prototype MCR model has
the ability to perform energy and
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
ancillary service co-optimization for
combined cycle units with multiple
configurations and components. The
developed model has no practical limits
on the number of configurations that
each unit can have and the model
allows for simultaneously enforcing
configuration and component level
constraints. Benefits of the new model
include enhanced modeling flexibility
and accuracy, which allows combined
cycle participants to submit bids that
align with their units’ physical
operating constraints, better alignment
with the real-time model and market
outcomes with increased social benefits.
To quantify the impacts of the MCR
model on PJM’s energy markets, PJM
gathered configuration and component
data from a large number of combined
cycle units in its footprint. Simulations
using one year of historical DAM data
were then performed to measure the
impacts of the MCR model on the
clearing engine’s computational
performance and market outcomes.
Results clearly demonstrate significant
potential bid production cost savings of
over $100 million per year with a very
modest increase in solution time. The
MCR model is currently being
implemented in PJM’s DAM for the
optimization of synchronous
condensers. It is planned that after
successful implementation of the MCR
model for synchronous condensers the
same model will be implemented for
combined cycle units and possibly for
hybrid resources as well.
Session T2 (Tuesday, June 27, 12:30
p.m.) (Commission Meeting Room)
Enhancements to Ramp Rate Dependent
Spinning Reserve Modeling
Dr. Shubo Zhang, Energy Market
Engineer, New York ISO (Rensselaer,
NY)
John L. Meyer, Senior Energy Market
Engineer, New York ISO (Rensselaer,
NY)
Iiro Harjunkoski, Researcher, Hitachi
Energy (Mannheim, Germany)
In a joint effort between the NYISO
and Hitachi Energy, a Ramp Rate
Dependent (RRD) formulation of
spinning reserve scheduling that utilizes
Multiple Response Rates (MRR) across a
Combined Cycle Gas Turbine (CCGT)
generator or other dispatchable
resource’s range of output has been
developed. To provide more flexibility
to Market Participants, a ‘‘Limited
Participation’’ conceptual strategy is
also included that would allow a CCGT
or other dispatchable resource to
selectively provide spinning reserves or
regulation for a certain range of output.
This presentation will discuss the
PO 00000
Frm 00047
Fmt 4703
Sfmt 4703
40239
market basis and design of Limited
Participation in spinning reserves and
regulation, in the context of Ramp Rate
Dependent Spinning Reserve Modeling.
Determining Dynamic Operating
Reserve Requirements for Reliability
and Efficient Market Outcomes:
Tradeoffs and Price Formation
Challenges
Matthew Musto, Technical Specialist—
Market Solutions Engineering, NYISO
(Rensselaer, NY)
Kanchan Upadhyay, Senior Energy
Market Engineer—Market Solutions
Engineering, NYISO (Rensselaer, NY)
Edward O Lo, Consultant, Hitachi
Energy (San Jose, CA)
With increasing intermittent resources
in the generation mix, the need for more
economic responsiveness and
operational flexibility while
maintaining system reliability is
growing. The NYISO and Hitachi Energy
have been working on advanced design
and techniques for calculating operating
reserve requirements dynamically for
each reserve region while
simultaneously optimizing the dispatch
solution in the market clearing engine.
A key benefit of the dynamic reserves
formulation is the functionality to
determine the least-cost generation and
reserve mix to meet load. This dynamic
determination of reserve requirements
in New York Control Area (NYCA) and
all reserve regions within the NYCA
creates new tradeoffs between energy
schedules and reserve requirements.
This presentation will discuss these
tradeoffs and highlight the associated
price formation challenge.
Operational Experience with Nodal
Procurement of Flexible Ramping
Product
Dr. Guillermo Bautista-Alderete,
Director, Market Analysis &
Forecasting, California ISO (Folsom,
CA)
George Angelidis, Executive Principal—
Power Systems and Market
Technology, California ISO (Folsom,
CA)
Yu Wan, Power Systems Engineer,
California ISO (Folsom, CA)
Kun Zhao, Market Engineering
Specialist Lead, California ISO
(Folsom, CA)
The CAISO’s market procures flexible
ramping capacity to manage weatherbased uncertainty realized in real time.
The CAISO introduced this product in
2016 using a procurement requirement
at the system level. Using a system-level
procurement requirement, the market
frequently procured flexible ramping
capacity from locations impacted by
E:\FR\FM\21JNN1.SGM
21JNN1
40240
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
lotter on DSK11XQN23PROD with NOTICES1
congestion, thereby stranding the
flexible ramping capacity. The CAISO
has enhanced the design of the flexible
ramping product using a formulation
that observes transmission constraints.
This approach considers congestion
management as part of the procurement
of flexible ramping capacity helping to
ensure the CAISO can deploy this
capacity when uncertainty arises. This
new design poses additional complexity
because the market clearing process
now considers transmission constraints
for energy and for flexible ramping
capacity. The CAISO will provide an
update on the performance of its flexible
ramping product under this new design.
Impact of DERs on Load Distribution
Factors in Forecasting
Dr. Khaled Abdul-Rahman, Vice
President, Power System and Market
Technology, California ISO (Folsom,
CA)
Hani Alarian, Executive Director of
Power Systems Technology
Operations, California ISO (Folsom,
CA)
Trevor Ludlow, Specialist Lead of
Power Systems Technology
Operations, California ISO (Folsom,
CA)
Chiranjeevi Madvesh, Lead Engineer of
Power Systems Technology
Operations, California ISO (Folsom,
CA)
The calculation of load distributing
factors (LDFs) is traditionally performed
based on a collection of historical state
estimator calculated values and stored
in libraries for use when simulating
power system operations in look-ahead
market and reliability applications. The
inherit assumption is that bus loads are
accurately estimated from the aggregate
system load forecast using LDFs, and
generation quantities are
deterministically known. Accordingly,
it is assumed that there is a strong
correlation between the system load and
individual bus loads. However, the
proliferation of behind-the-meter
distributed energy resources, solar
rooftops, batteries, hybrid resources, as
well as the use of behind the-meter
demand response utility programs, and
electric vehicles introduces a nonconforming load component at locations
that were previously conforming loads.
This issue requires a more accurate
forecast of non-conforming loads by
taking into consideration the
probabilistic nature of bus loads and
variable/intermittent generation. The
CAISO’s enhanced LDF forecast
algorithm takes into account not just the
average hour of the day and the day of
the week but includes machine learning
ability to distinguish between flows that
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
scales up with load in both a non-linear
and linear fashion. It also includes a
new fusion-forecasting model that
improves forecasting accuracy.
Additionally, the CAISO’s algorithm
uses data engineering and preprocessing
options to increase the accuracy of the
proposed model. The CAISO analyzes
load data to verify that the proposed
methodology provides higher
forecasting accuracy with lower error
indices.
Increased Congestion in SPP and
Optimization in the Day Ahead Market
With Gurobi
Seth Mayfield, Manager of Market
Support & Analysis, Southwest Power
Pool (Little Rock, AR)
Yasser Bahbaz, Director of Markets
Development, Southwest Power Pool
(Little Rock, AR)
SPP has seen substantial increased
congestion in recent years. These trends
have numerous reliability and economic
impact. In the Day-Ahead Market, SPP
has noticed high transmission activation
leading to longer optimization runtimes.
High activations results in large
increases in the mathematical growth,
which then results in slower Mixed
Integer Program (MIP) runtimes. Other
factors include increasing market rules
complexity (such as uncertainty
product) and additional market resource
registrations. SPP performed a study
where we evaluate swapping our
existing optimization engine (IBM’s
CPlex) with Gurobi’s optimization
engine. The study reran every approved
DAMKT SCUC operating day for 2021
(365 cases). Gurobi solved the cases
41% faster than CPlex using Gurobi
without tuning. A very light discussion
with Gurobi resulted in a few tuning
suggestions which pushed the runtime
reduction to 43%. SPP is in the process
of acquiring Gurobi licenses and will
work with our software vendor to
incorporate the engine into our market.
Phase 1 will include simultaneously
running both CPlex and Gurobi as we
believe this will give us the best/fastest
results for each day. It is expected that
there will be a transition to using more
Gurobi instances than CPlex as time
goes on.
Session T3 (Tuesday, June 27, 3:30 p.m.)
(Commission Meeting Room)
MISO Operations Risk Assessment and
Uncertainty Management
Dr. Congcong Wang, Lead, Operations
Risk Assessment, Midcontinent ISO
(Carmel, IN)
Dr Long Zhao, Senior Advisor of
Operations Risk Assessment,
Midcontinent ISO (Carmel, IN)
PO 00000
Frm 00048
Fmt 4703
Sfmt 4703
Jason Howard, Director of Operations
Risk Management, Midcontinent ISO
(Carmel, IN)
Fleet transition is driving a new risk
profile at MISO. Uncertainty and
Variability are increasing in their
intensity, diversity, and volatility.
While probabilistic forecasting has
made progress for wind and solar, its
integration into operations and markets
is uneven. Furthermore, uncertainty
comes in more sources than just
renewable energy such as generation
and transmission outages, fuel scarcity
especially during extreme weather
events, resulting in challenges for the
RTO to manage the aggregated or net
uncertainty. This presentation will
outline MISO’s operations risk
assessment and uncertainty
management initiatives including: (1)
Characterize Risks—transform
traditional deterministic renewable,
load and ‘‘net’’ load forecasts to
probabilistic forecasts in production
systems; and assess generation and fuel
risks to better capture the unknowns; (2)
Integrate risks into Operations
Situational Awareness and Operations
Planning—provide control room a
dynamic and geographically granular
visualization of operating reserve
margin; and visibility of weather driven
operations risks; (3) Automate risk
management through market products
with dynamic reserve requirements—
assess net uncertainty across different
timeframes; and predict risks to
establish a daily target for procuring
market-based reserves using analytical
and meteorological techniques. This
work is done in collaboration with R&D
through the joint Uncertainty Roadmap.
Market Simulation Tools and
Uncertainty Quantification Methods To
Support Operational Uncertainty
Management
Dr. Nazif Faqiry, R&D Engineer,
Midcontinent ISO (Carmel, IN)
Dr. Arezou Ghesmati, R&D Engineer,
Midcontinent ISO (Carmel, IN)
Dr. Bing Huang, R&D Engineer,
Midcontinent ISO (Carmel, IN)
Dr. Yonghong Chen, Consulting
Advisor, Midcontinent ISO (Carmel,
IN)
Dr. Bernard Knueven, Research
Scientist, National Renewable Energy
Laboratory (Golden, CO)
Portfolio evolution and more frequent
extreme weather events are introducing
more challenges to MISO Market
Operations with new risk profiles. To
improve market efficiency and generate
efficient price signals for operational
and investment decisions, it is
increasingly important to align market
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
lotter on DSK11XQN23PROD with NOTICES1
design with reliability and risk
management needs. This work presents
the Electrical Grid Research &
Engineering (EGRET) market simulation
tool adapted and enhanced at MISO to
evaluate existing and future system, and
a novel netload ramp uncertainty
prediction and scenario generation
method to support stochastic simulation
and reserve requirement settings. First,
it presents a multi-periods market
simulation tool and its capabilities,
including rolling real-time unit
commitment and economic dispatch
(UCED), followed by the results of 8 GW
solar penetration study. Then, it
presents a novel method that is
developed to predict and generate
scenarios for uncertainties across
different lead times. The scenarios can
be used as inputs to the market
simulation tool for stochastic
simulation. The two parts together may
lead to multi-scenario stochastic unit
commitment in the future. In the near
term, the stochastic market simulation
can help to validate market design and
operational procedures. The uncertainty
predication and scenario generation
may help operational situational
awareness and better define reserve
requirements and operational margins.
Pumped Storage Optimization in RealTime Markets Under Uncertainty
Bing Huang, Research Engineer,
Midcontinent ISO (Carmel, IN)
Arezou Ghesmati, R&D Scientist,
Midcontinent ISO (Carmel, IN)
Yonghong Chen, Consulting Advisor,
Midcontinent ISO (Carmel, IN)
Ross Baldick, Emeritus Professor,
University of Texas at Austin (Austin,
TX)
Pumped storage hydro units (PSHU)
can provide flexibility to power systems
and may especially be valuable with
increasing shares of intermittent
renewable resources. However, the
scheduling of PSHUs, particularly in the
real-time market, has not been
thoroughly studied. To enhance the use
of PSH resources and leverage their
flexibility, it is important to incorporate
the uncertainties to properly address the
risks in the real-time market operation.
In this work, first a deterministic PSHU
model that incorporates the state of
charge in the Day-ahead market
optimization is introduced. Second, two
pumped storage hydro (PSH) models
that use probabilistic price forecasts are
proposed for Look-ahead commitment
(LAC) in the real-time market operation.
A risk neutral stochastic PSH model and
a risk averse robust optimization PSH
model are developed using the
probabilistic price forecasts to capture
the real-time market uncertainties.
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Numerical studies in Mid-continent
Independent System Operator (MISO)
system demonstrate that the proposed
models improve market efficiency and
reduce PSH real time risk compared to
the current approach. Probabilistic
forecast for Real Time Locational
Marginal Price (RT–LMP) is created and
embedded into the proposed stochastic
and robust optimization models, a
statistically robust approach is used to
generate scenarios for reflecting the
temporal inter-dependence of the LMP
forecast uncertainties.
Forecasting Aggregate Electricity
Demand on a 5-Minute Basis Using
Machine Learning
Dr. Yinghua Wu, Senior Lead Data
Scientist, PJM Interconnection
(Audubon, PA)
Laura Walter, Senior Lead Data
Scientist, PJM Interconnection
(Audubon, PA)
Dr. Anthony Giacomoni, Manager—
Advanced Analytics, PJM
Interconnection (Audubon, PA)
PJM currently has two load forecasts
used in dispatch and real-time
operations. These forecasts are
comprised of the short-term forecast,
which is the forecasted hourly average
load for the next seven days, and the
very short-term load forecast, which is
the forecasted 5-minute load averages
for the next six hours. The very shortterm load forecast is constantly fed into
the real-time dispatch software for
optimal power flow calculations and
real-time market pricing. It is of crucial
importance that these forecasts closely
match the actual load in the near future
to maintain system frequency and
voltage. If not, dispatchers must take
action to quickly intervene and adjust
the load up or down. The load profiles
generally follow temporal patterns, but
are also driven by weather and other
usage patterns. Given the recent rapid
growth of machine learning
technologies, this presentation will
survey a collection of some of the most
representative and innovative methods
that are suitable to time series
predictions such as load forecasting,
e.g., gradient boosting, recurrent neural
network, causal convolution, etc. We
will also revisit some traditional
methods such as generalized linear
models and automatic regressive
moving average (ARMA) methods to
explore whether they can capture the
load shape in short horizons. We will
survey and analyze these new
technologies for their power of
prediction to see if these methods
provide the potential to improve on
current forecasting practices.
PO 00000
Frm 00049
Fmt 4703
Sfmt 4703
40241
Long-Term Outlook for the ERCOT Grid
Pengwei Du, Supervisor—Economic
Analysis & Long Term Planning
Studies, The Electric Reliability
Council of Texas (Austin, Texas)
The bulk transmission network within
ERCOT consists of the 60-kilovolt (kV)
and higher transmission lines and
associated equipment. ERCOT conducts
a forward-looking study to understand
long-term reliability and economics
need to ensure continued system
reliability and efficiency. This talk will
present the key challenges and findings
from the most recent long-term system
assessment planning study, which
accounts for the inherent uncertainty of
planning the system in the 10- to 15year planning horizon.
Day 2—Wednesday, June 28
Session W–A1 (Wednesday, June 28,
9:00 a.m.) (Commission Meeting Room)
Uncertainty-Informed Renewable
Energy Scheduling: A Scalable Bilevel
Framework
Dr. Dongwei Zhao, Postdoctoral
Associate, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Vladimir Dvorkin, Postdoctoral
Fellow, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Stefanos Delikaraoglou, Data
Scientist, Axpo Solutions AG (Zurich,
Switzerland)
Dr. Alberto J. Lamadrid L., Associate
Professor, Lehigh University
(Bethlehem, PA)
Dr. Audun Botterud, Principal Research
Scientist, Massachusetts Institute of
Technology (Cambridge, MA)
The fast-growing variable renewable
energy sources (VRES) in electricity
markets are creating challenges to
uncertainty management. This work
addresses these challenges by adopting
an uncertainty-informed adjustment
toward VRES bidding quantities in the
day-ahead market and minimizing
expected system costs under the
sequential market-clearing structure.
However, implementing this mechanism
requires solving a bilevel optimization
problem, which is computationally
difficult for practical large-scale
systems. To overcome this challenge, we
propose a novel technique based on
strong duality and McCormick
envelopes. This approach relaxes the
original problem to a linear program,
enabling efficient computation for largescale systems. We conduct case studies
on the 1576-bus NYISO systems and
compare our bilevel VRES-adjustment
model with the myopic strategy where
VRES producers bid the forecast value
in the day-ahead market. The results
E:\FR\FM\21JNN1.SGM
21JNN1
40242
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
lotter on DSK11XQN23PROD with NOTICES1
demonstrate that under a future high
VRES penetration level (e.g., 40%), our
bilevel framework can significantly
reduce the expected system cost and the
volatility of the market prices,
participants’ revenues, and real-time redispatch adjustments, by efficiently
optimizing VRES quantities in the dayahead market. Furthermore, we found
that increasing transmission ability may
incur a much higher system cost under
the myopic strategy while a lower cost
under the bilevel model) because of the
lack of flexible generators or reserves in
real time to deal with uncertainty.
Enhancing Power System Resilience and
Efficiency Through Proactive Security
Assessments and the Use of
powerSAS.m: A Robust, Efficient, and
Scalable Security Analysis Tool for
Large-Scale Systems
Dr. Yang Liu, Postdoctoral Appointee,
Argonne National Laboratory
(Lemont, IL)
Dr. Feng Qiu, Principal Computational
Scientist, Argonne National
Laboratory (Lemont, IL)
Dr. Jianzhe Liu, Energy Systems
Scientist, Argonne National
Laboratory (Lemont, IL)
Power system security assessment is
directly related to increasing real-time
and day-ahead market and planning
efficiency because it helps ensure the
reliable and secure operation of the
power system, which is essential for
efficient market and planning activities.
Without proper security assessments,
the power system is vulnerable to a
variety of threats, including cyber
attacks, natural disasters, and
equipment failures, which can disrupt
the operation of the system and lead to
market inefficiencies and planning
uncertainties. By performing security
assessments and identifying potential
vulnerabilities, system operators can
take proactive measures to mitigate risks
and improve the reliability and
efficiency of the power system, which,
in turn, supports the goals of real-time
and day-ahead market and planning
efficiency. Additionally, advanced
software tools and models can be used
to support security assessments,
enabling operators to better anticipate
and respond to potential security threats
and further improve the efficiency and
reliability of the power system. Existing
tools (commercial or open-source) work
fine for routine security analysis under
normal operating conditions. However,
in resilience analysis, which studies the
system security and reliability under
stressed scenarios, existing tools often
experience various numerical issues,
significantly impacting operators’
assessment of system resilience. A
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
recent example is the non-convergence
issues with PSS/E, one of the best
commercial power system analysis tools
used in the DOE Puerto Rico resilience
project led by Argonne. The numerical
issues forced the team to give up more
advanced analysis. A robust and
efficient security analysis tool is
imperative for resilience study in largescale systems. In this talk, we will
introduce a recently released opensource power system security analysis
tool called powerSAS.m. The
powerSAS.m is a robust, efficient, and
scalable power grid analysis framework
based on semi-analytical solutions
(SAS) technology. The talk will cover
the following two critical aspects and
discuss how they are directly related to
increasing real-time and day-ahead
market and planning efficiency. First,
we will introduce the fundamentals of
the SAS technology and the major
functionalities of the powerSAS.m,
including (1) Steady-state analysis,
including power flow, continuation
power flow, and contingency analysis.
(2) Dynamic security analysis, including
voltage stability analysis, transient
stability analysis, and flexible userdefined simulation. (3) Hybrid
extended-term simulation provides
adaptive quasi-steady-state-dynamic
hybrid simulation in extended term
with high accuracy and efficiency. We
will also introduce some ongoing
functionalities, including the SAS-based
electromagnetic transient (EMT)
simulation and multi-scale simulations.
Second, we will present some use cases
to demonstrate the key features and
performance of the SAS technology and
powerSAS.m tool, including: (1) High
numerical robustness. Backed by the
SAS approach, the PowerSAS tool
provides much better convergence than
the tools using traditional Newton-type
algebraic equation solvers when solving
algebraic equations/ordinary differential
equations/differential-algebraic
equations. (2) Enhanced computational
efficiency and scalability. Due to the
analytical nature, PowerSAS provides
model-adaptive high-accuracy
approximation, which brings
significantly extended effective range
and much larger steps for steady-state/
dynamic analysis. PowerSAS has been
used to solve large-scale system cases
with 200,000+ buses.
Stochastic Unit Commitment and
Market Clearing in Julia With
UnitCommitment.jl
Dr. Alinson Santos Xavier,
Computational Scientist, Argonne
National Laboratory (Lemont, IL)
PO 00000
Frm 00050
Fmt 4703
Sfmt 4703
Ogu¨n Yurdakul, Ph.D. Candidate,
Technische Universita¨t Berlin (Berlin,
Germany)
Dr. Aleksandr M. Kazachkov, Assistant
Professor, University of Florida
(Gainesville, FL)
Jun He, Professor, Purdue University
(West Lafayette, IN)
Dr. Feng Qiu, Principal Computational
Scientist, Argonne National
Laboratory (Lemont, IL)
UnitCommitment.jl (UC.jl) is a
comprehensive open-source
optimization package for the SecurityConstrained Unit Commitment Problem
(SCUC), providing an extensible and
fully-documented data format for the
problem, Julia/JuMP implementations of
state-of-the-art mathematical
formulations and solution methods, as
well as a diverse collection of realistic
and large-scale benchmark instances.
This talk focuses on two major features
recently introduced to the package.
Firstly, the package now supports
modeling and optimizing two-stage
stochastic versions of the problem, in
addition to the deterministic SCUC.
Compared to existing implementations,
UC.jl allows a broader set of network
parameters to be treated as uncertain,
including not only demands and
generation limits, but also production
costs, network topology, transmission
limits, among others. Benchmark scripts
are provided to accurately evaluate the
performance of different stochastic
solution methods. Secondly, the
package now includes various
functionalities for market clearing, such
as the computation of generator
payments and locational marginal prices
(LMPs) using different methods
proposed in the literature. In this talk,
we will discuss the usage of these new
features, technical challenges associated
with them, and the potential
simulations or studies that they enable.
Reduced-Order Decomposition and
Coordination Approach for MarkovBased Stochastic UC With High
Penetration Level of Wind and BESS
Niranjan Raghunathan, Ph.D. Student,
University of Connecticut (Storrs, CT)
Dr. Peter B. Luh, Professor, University of
Connecticut and National Taiwan
University (Alexandria, VA)
Dr. Zongjie Wang, Professor, University
of Connecticut (Storrs, CT)
Dr. Mikhail A. Bragin, Professor,
University of California, Riverside
(Riverside, CA)
Dr. Bing Yan, Professor, Rochester
Institute of Technology (Rochester,
NY)
Dr. Meng Yue, Research Staff Electrical
Engineer, Brookhaven National
Laboratories (Upton, NY)
E:\FR\FM\21JNN1.SGM
21JNN1
lotter on DSK11XQN23PROD with NOTICES1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Dr. Tianqiao Zhao, Renewable Energy
Group, Brookhaven National
Laboratories (Upton, NY)
With the growing need to achieve
carbon neutrality, integrating renewable
energy (e.g., wind and solar) and battery
energy storage systems (BESSs) into the
grid is an urgent and challenging
enterprise. At the day-ahead stage, unit
commitment (UC) decisions need to
account for uncertainties of
geographically distributed renewable
generation. BESS integration can help
mitigate intermittence and reduce
curtailment by storing energy during
high renewable generation periods and
releasing energy when needed, thus
improving the cost efficiency of grid
operation. Therefore, ensuring economic
and reliable grid operations with the
significant rise in renewable energy
penetration necessitates the
consideration of spatially distributed
uncertainties and BESS in UC. To
achieve this, a risk-neutral approach
(i.e., scenario-based stochastic UC and
Markov-based stochastic UC) is
preferred over risk-averse approaches
(e.g., robust optimization and interval
optimization), as the latter yields overly
conservative solutions. Between the
risk-neutral approaches, Markov-based
approaches have two advantages over
scenario-based approaches: (1) Due to
the Markov property, where stochastic
information at the next time step
depends only on the information at the
current time step, the uncertainty can be
compactly modeled by wind generation
states at each time step and state
transitions between subsequent time
steps. Consequently, the overall number
of possible states and transitions in the
Markov model increases linearly with
the number of intervals in the
optimization horizon, whereas the
number of possible scenarios increases
exponentially. (2) Reduced Markov
models preserve the volatility of wind
generation, the underlying spatiotemporal correlation structure, and lowprobability, high-impact events more
effectively in uncertainty sets compared
to scenarios. Therefore, the problem is
formulated as Markov-based stochastic
UC. With distributed wind, however,
the number of possible wind states
grows exponentially with the number of
wind farms in different locations
considered, posing major computational
difficulties. To reduce complexity, an
innovative decomposition and
coordination framework is developed,
where approximate area subproblems
are formulated by utilizing areaperspective, reduced-order Markov
models. In these models, the variability
of local (in-area) windfarms is
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
emphasized while that of nonlocal (outof-area) windfarms is approximated by
using Principal Component Analysis
(PCA) to reduce dimensionality while
preserving the maximum amount of
variation. This is a reasonable
approximation because variations at the
local level have more impact on the
behavior of local units and power flow
through local transmission lines
compared to variations at distant
locations. The objective of an
approximate area subproblem is to
optimize in-area resources based on its
area-perspective Markov model. The
approximate area subproblems are
solved iteratively while their solutions
are coordinated using Surrogate
Absolute-Value Lagrangian Relaxation
(SAVLR), a state-of-the-art dual method
with faster convergence than traditional
Lagrangian Relaxation (LR)-based
methods. To improve performance, an
online filtering method for removing
redundant transmission capacity
constraints at each iteration is
implemented in parallel by utilizing
multiple cores. The solutions are
validated using Monte Carlo
simulations. Testing results based on
the 118-bus system with 5 distributed
wind farms show the effectiveness of
the method in finding low-cost and
robust UC solutions in a timely manner
for multiple cases with different
volatilities of wind generation and
simulated extreme weather events.
Analysis of the operation of BESSs
shows that they absorb excess energy
during high wind periods and release
the energy during low wind periods,
thus reducing wind curtailment and
overall costs.
Learn To Branch and Dive for LargeScale Unit Commitment Problem
Jingtao Qin, Research Assistant,
University of California, Riverside
(Riverside, CA)
Nanpeng Yu, Associate Professor,
University of California, Riverside
(Riverside, CA)
Mikhail Bragin, Assistant Research
Professor, University of Connecticut
(Storrs, CT)
Unit commitment (UC) problems are
typically formulated as mixed-integer
program (MIP) and solved by the
branch-and-bound (B\&B) paradigm.
The recent advances in graph neural
network (GNN) motivate the application
of GNN in learning to dive and branch
for B\&B algorithm in modern MIP
solvers. Existing GNN models are
mostly constructed from B\&B trees,
which are computationally expensive
when dealing with large-scale UC
problems. In this paper, we propose a
physical network information-based
PO 00000
Frm 00051
Fmt 4703
Sfmt 4703
40243
hierarchical graph convolution model
for neural diving that leverages the
underlying features of various
components of power systems to find
high-quality variable assignments.
Furthermore, we adopt the B\&B treebased graph convolution model for
neural branching to select the optimal
variables for branching at each node of
the B\&B tree. Finally, we integrate
neural diving and neural branching into
a modern MIP solver to establish a novel
neural MIP solver that is specially
designed for large-scale UC problems.
Numeral studies show that our
proposed model has better performance
and scalability than the baseline B\&B
tree-based model on neural diving.
Moreover, the neural MIP solver yields
the lowest MIPGap for all testing days
after combining it with our proposed
neural diving model and baseline neural
branching model.
Session W–B1 (Wednesday, June 28,
9:00 a.m.) (Hearing Room One)
Stochastic Nodal Adequacy Pricing
Platform (SNAP)
Dr Richard D. Tabors, Partner and
President, Tabors Caramanis
Rudkevich (Newton, MA)
Dr. Aleksandr Rudkevich, President,
Newton Energy Group (Newton, MA)
Russel Philbrick, President, Polaris
Systems Optimization (Seattle, WA)
Dr. Selin Yanikara, Analyst, Newton
Energy Group (Newton, MA)
The Stochastic Nodal Adequacy
Pricing Platform (SNAP) software
system provides an implemented
methodology to calculate the probability
and value of RESOURCE INADEQUACY
of electricity supply on an hourly basis
for a period of one to five days ahead
of real time. The stochasticity of SNAP
is driven by the stochastic weather
forecasts available and provided by IBM
The Weather Company on a i5 day
forward basis for a 4x4km grid
worldwide (SNAP uses at most 5).
Forecasts are developed from 76
different numerical weather prediction
models (and their ensemble members)
as inputs to their forecast system.
Bayesian model averaging is used to
correct for systematic errors (bias).
Results are rearranged to create 100
synthetic weather system scenarios
through the use of Ensemble Copula
Quantile-Coupling technique. The result
is a probabilistic forecast within which
each of the scenarios is equally likely.
As the electric supply system moves
toward greater dependence on
renewable sources both in front of and
behind the meter and as weather
conditions are evolving, the stochastics
of weather have become a, if not the
E:\FR\FM\21JNN1.SGM
21JNN1
40244
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
lotter on DSK11XQN23PROD with NOTICES1
driving force in forecasting power
system adequacy. SNAP is developed as
an information/assist tool for
operational planning at the utility
system level. SNAP has been developed
with funding from the Department of
Energy’s ARPA–E PERFORM program.
SNAP uses the individual components
of the weather forecast scenarios to
create 100 probabilistic scenarios of the
output of individual wind and solar
locations as well forecasting of demand
incorporating behind the meter
generation. Based on the probability of
renewable supply, demand, and the
probability of outage of traditional
supply sources and transmission, SNAP
runs 100,000 Monte Carlo SCED/SCUC
runs of the commercially available
cloud-based ENELYTIX software system
to identify the existence of resource
inadequacy, the nodal location of that
inadequacy, its cause and potential
solutions. The objective is to present the
structure of the computational and
analytic processes that allow for
running and evaluation of 100,000
scenarios for each individual forecast
hour. The presentation will discuss the
cloud-based structure the allows the
analysis to be completed in under 50
minutes using 500 virtual machines at a
costs of $120 at spot rates.
Assessing Nodal Adequacy of Large
Power Systems
Dr. F. Selin Yanikara, Energy Analyst,
Newton Energy Group (Newton, MA)
Russ Philbrick, President, Polaris
Systems Optimization (Seattle, WA)
Aleksandr M. Rudkevich, President,
Newton Energy Group (Newton, MA)
Sophie Edelman, Electricity Research
Analyst, The Brattle Group (New
York, New York)
Extreme weather events, increasing
electrification, and integration of wind
and solar power pose significant
challenges for reliable operation of the
power grid. Quantitative evaluation of
these impacts is critical for making
efficient policy and investment
decisions and in designing markets and
engineering controls. This presentation
will summarize the theoretical
foundation for nodal probabilistic
assessment of resource adequacy and its
applications to modern electrical
systems with a significant penetration of
weather dependent variable energy
resources and storage technologies. In
addition, this presentation will address
the need for, and will present, new
adequacy metrics that reflect an
economically justified contribution of
each system asset—generation,
transmission, or demand resource to
system adequacy. The analysis relies on
the Monte Carlo based methodology
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
using new computationally efficient and
statistically accurate methods. We
illustrate the numerical results and
computational performance of our
approach using the ENELYTIX®
powered by PSO SaaS and our standard
dataset for the ERCOT market.
Comparison of Flexibility Reserve and
ORDC for Increasing System Flexibility
Phillip de Mello, Senior Technical
Leader, Electric Power Research
Institute (Palo Alto, CA)
Erik Ela, Program Manager, Electric
Power Research Institute (Boulder,
CO)
Nikita Singhal, Technical Leader,
Electric Power Research Institute
(Palo Alto, CA)
Alexandre Moreira da Silva, Research
Scientist, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Miguel Heleno, Research Scientist/
Engineer, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Power system composition changes
are making flexible resources more
important to balance the increasing
variability and uncertainty. System
operators often look to increase the
amount of flexibility available to give
real time operations greater control.
Two common methods for increasing
flexibility are to create new reserve
products that are targeted towards
flexibility and ramping capability or
using an extended operating reserve
demand curve (ORDC) to procure more
of an existing reserve when the
additional value exceeds costs. Detailed
operation simulations to mimic day
ahead and real time markets were
conducted to compare flexibility
reserves and ORDCs. Benefits to
reliability were measured by a reduction
in shortages of reserves and energy
experienced across the system. The
extra reserves generally increased the
costs of running the system, but it was
lower than the penalty prices of the
shortages relieved. Some periods
showed a reduction of system costs with
added reserves, suggesting that more
efficient designs of reserves could not
only increase system reliability but also
reduce costs. Both methods increase the
flexibility on the system, but function
differently in typical deployments in
current ISO/RTO practice. The different
parameters defining each technique was
explored to understand how their
differences manifest in improving
reliability. Most differences reflect the
tradeoff between flexibility in designing
a new product versus ease of
implementation of procuring more of an
existing product. The key difference of
the techniques results due to the sharing
of generator ramp rates between
PO 00000
Frm 00052
Fmt 4703
Sfmt 4703
different reserve products. Most existing
implementations require dedicated
capacity for each reserve product but
often do not require dedicated ramp
capability. Using a new flexibility
reserve that can share ramp rates will
typically be able to schedule more
reserve for a certain available generator
capacity than applying an ORDC to an
existing product. This impacts the cost
and effectiveness of those reserves
particularly in periods of system stress.
Toggling the ramp sharing constraint
can be used to make either
implementation perform similarly as the
other.
ABSCORES, A Novel Application of
Banking Scoring and Rating for
Electricity Systems
Alberto J. Lamadrid L., Associate
Professor, Lehigh University
(Bethlehem, PA)
Audun Botterud, Principal Research
Scientist, Massachusetts Institute of
Technology (Cambridge, MA)
Jhi-Young Joo, Research Scientist,
Lawrence Livermore National
Laboratory (Livermore, CA)
Shijia Zhao, Energy Systems Scientist,
Argonne National Laboratory
(Lemont, IL)
This presentation discusses the basis
for the establishment of an Electric
Assets Risk Bureau. We are developing
different scores customized according to
the application required. We study the
use of financial models to determine the
risk associated to individual assets in
the system. We present a model focused
on managing operational risk, and
outline the methodology for risk metrics
applied to high impact, low probability
(HILP) events. We distinguish between,
first, public risk, related to the physical
provision of supporting services
required for the stability of the
electricity system (i.e., ancillary
services); and second, financial risk,
derived from positions taken by
participants with pecuniary
repercussions. A key paradigm of our
framework is a focus on
implementability of the approach
(under existing regulatory structures)
and a method for dispute resolution
given potential decisions taken with the
metrics proposed.
Recent Developments in the Day-Ahead
and Real-Time Electricity Market Design
and Software Caused by the Higher
Energy Costs and Emerging
Technologies—European Experience
Petr Svoboda, Engineer, Unicorn
Systems a.s. (Prague, Czech Republic)
Europe has been dealing with the
imbalance of production and
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
consumption for years. This has led to
the development of the single deregulated electricity market to solve the
barriers between the individual states
and provide the most cost-effective way
to ensure secure, sustainable, and
affordable energy supply to the
customers. Recent changes in the market
caused by the increase of the energy
costs and emergence of the new
technologies have caused the
fundamental shifts in the market design
and software enabling its operations. In
our presentation we would like to
discuss the latest developments in the
areas of: 1. New algorithms of
transmission capacity calculation that
have proven to increase the efficiency of
capacity usage and relevant economic
welfare. 2. Development of the HVDC
interconnectors and their impact on the
market efficiency and transmission
costs. 3. 15-minute day-ahead markets.
4. Emergence of the integrated real-time
markets, new reserve products and
multi-interval market clearing. 5.
Introduction of the flexibility
instruments to the energy markets. 6.
Successful implementation of the
hourly renewable certificates as the next
step towards clean energy transition.
lotter on DSK11XQN23PROD with NOTICES1
Session W–A2 (Wednesday, June 28,
12:30 p.m.) (Commission Meeting Room)
System Resilience Through Electricity
System Restoration and Related Services
Douglas Wilson, Principal Analytics
Engineer, GE (Edinburgh, United
Kingdom)
James Yu, Head of Future Networks,
ScottishPower Energy Networks
(Glasgow, United Kingdom)
Ian Macpherson, Senior Innovation
Manager, ScottishPower Energy
Networks (Glasgow, United Kingdom)
Marta Laterza, Power Systems Engineer,
General Electric (Glasgow, United
Kingdom)
Marcos Santos, Senior Power Systems
Engineer, General Electric (Glasgow,
United Kingdom)
Richard Davey, Senior Project Manager,
General Electric (Glasgow, United
Kingdom)
Electricity system restoration
following a partial or system-wide
outage is an essential service in the
power system. There is a need to apply
new resources based on renewable
resources to replace the services that up
to now have depended on fossil fuel
generation. This presentation describes
a project led by SP Energy Networks in
collaboration with GE to demonstrate a
co-ordinated restoration approach in the
distribution grid using a novel control
approach applied to a controlled zone
with multiple resources. Live trials of
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
the approach in the SP Energy Networks
power system are presented, as well as
results of testing the approach
extensively in a hardware-in-the-loop
environment. The emerging weaknesses
of the traditional methodology were
recognised in UK electricity regulation,
which was recently changed to include
a requirement for 60% of customer load
to be restored within 24 hours on a
regional basis, with all supplies restored
within 5 days (Electricity System
Restoration Standard, 2021). Previous
restoration requirements were less
onerous on the timeframes and did not
define geographic requirements. Since
some regions now lack large
transmission-connected blackstartcapable plant for the traditional topdown restoration approach, there is a
need to harness the capabilities that
renewable and distributed generation
and storage can offer to address the
deficit of system restoration capability.
The new service being developed and
trialled involves starting distributed
generation and growing an island with
customer load within the distribution
network. This island can be sustained
by automated control through managed
load pickup as well unplanned
disturbances with existing distributed
energy resources, battery storage and
demand response providing the control
capability to keep the island in balance.
The blackstart zone may then be
reconnected to the transmission
network if this is energised and can then
contribute to managing the power
balance as the restoration of the wider
system continues. If appropriate,
neighbouring islands can be connected
together, and the resulting larger island
is capable of greater block load pickup
of active and reactive loads. One of the
distinctive benefits of the approach
taken is that it uses diverse resources of
existing generation, storage and demand
response capability that is present and
operational in the network for other
day-to-day purposes. These resources
can be harnessed to provide the new
electricity system restoration services
with few additional power assets.
Inherently, some devices can provide
faster response than others, and large
instantaneous power, and some may be
able to sustain an energy supply while
others have limited energy resource.
Voltage support and short circuit
current are also considerations. A
diversity of renewable resources is
useful to mitigate against individual
resources being unavailable e.g. low
wind or low solar conditions. A key
requirement for the co-ordination of an
electricity system restoration zone is a
wide area monitoring and control
PO 00000
Frm 00053
Fmt 4703
Sfmt 4703
40245
system that manages the power
balancing and switching of the network
to automate the process of growing and
sustaining the power island. The
approach being trialled includes a
SCADA/distribution management
system with the topology information
for network switching, together with a
synchrophasor based wide area control
system that manages the balancing,
frequency control and
resynchronization alignment of the
network. Since the island is small in
comparison to the normal
interconnection, a rapid response to
disturbances is required to maintain a
stable frequency. Once a distribution
zone is instrumented with the
measurement, communication and
control equipment to deliver the service,
it is possible to use the same
infrastructure to offer further services to
manage grid stability in the more
common circumstance of disturbances
during grid-connected operation.
Coordinated Cross-Border Capacity
Calculation Through The FARAO OpenSource Toolbox
Violette Berge, Vice President, Artelys
Canada (Montre´al, Canada)
Dr. Nicolas Omont, Vice President of
Operations, Artelys (Paris, France)
Cross-borders exchanges have taken a
major role in European strategy to
achieve climate goals. The European
Commission set a target of 15%
interconnections in 2030, meaning that
each country should have the physical
capability to export at least 15% of their
production. Increasing exchanges makes
short term planning more complex. In
this context, the French TSO (RTE)
released an open-source toolbox FARAO
to perform Coordinated Capacity
Calculation (CCC) and ensure the
security of supply. Artelys is a
consultancy expert in power systems
optimization and carries out various
projects around TSO operational
coordination in Europe. FARAO
performs the optimization of both
preventive and curative remedial
actions, including HVDC lines, phaseshifter transformers and counter-trading
but also topological actions. It is
operationally used for the exchanges
between Italy and its northern neighbors
as well as between France, Spain and
Portugal. Artelys will present the
algorithms of the FARAO toolbox and
how they are actually used to enable
greater operational coordination
amongst the countries.
E:\FR\FM\21JNN1.SGM
21JNN1
40246
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Advanced Scenario Selection Methods
for Probabilistic Transmission Planning
Assessments
lotter on DSK11XQN23PROD with NOTICES1
Dr. Eknath Vittal, Principal Technical
Leader, EPRI (Palo Alto, CA)
Anish Gaikwad, Senior Program
Manager, Electric Power Research
Institute (Palo Alto, CA)
Parag Mitra, Senior Technical Leader,
Electric Power Research Institute
(Palo Alto, CA)
Given the temporal and spatial
characteristics of extreme weather
events, developing transmission
planning scenarios, i.e., snapshots of
instantaneous operational conditions, is
a challenging problem. It requires a
multi-model assessment that links longterm planning models that capture the
operational performance of the system
(resource adequacy and production cost
modeling) to the future meteorological
projections that will inform the impacts
of weather and extreme events. Scenario
generation and analysis is
computationally and labor intensive.
Identifying snapshot conditions for
future system states can be challenge.
This presentation will highlight and
detail an EPRI application that helps
transmission planners identify critical
power flow conditions from operational
simulations such as production cost
simulations. The EPRI High-Level
Screening (HiLS) for Data Analytics tool
allows planners to apply statistical
analysis to large dataset that capture the
operational performance of the system.
The tool allows for the data to be
organized into clusters of similar
operating conditions reducing the
dimensionality of the state space. As an
example, an operational simulation of
8760 hours can be reduced to 10
operating hours that capture 95% of the
variability seen over the course of the
year. As uncertainty and variability
increase on both the generation and
load, developing methods and processes
to understand the conditions that
present the most challenging reliability
and stability conditions will be critical.
The HiLS tools, provides transmission
planners a platform that can help them
organize and visualize data representing
future operational conditions of the
system that considers both load
variability and generator availability.
Incorporating Climate Projections Into
Grid Models: Bridging the Data Gap To
Capture Weather Dependent
Representative and Extreme Events and
Corresponding Uncertainties
Dr. Zhi Zhou, Principal Computational
Scientist, Argonne National
Laboratory (Lemont, IL)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Dr. Neal Mann, Energy Systems
Engineer, Argonne National
Laboratory (Lemont, IL)
Yanwen Xu, Graduate Student,
University of Illinois at Chicago,
Urbana-Champaign (Champaign, IL)
Zuguang Gao, Graduate Student,
University of Chicago (Chicago, IL)
Dr. Akintomide Akinsanola, Assistant
Professor, University of Illinois at
Chicago (Chicago, IL)
Dr. Todd Levin, Team Lead, Argonne
National Laboratory (Lemont, IL)
Dr. Jonghwan Kwon, Energy Systems
Engineer, Argonne National
Laboratory (Lemont, IL)
Dr. Audun Botterud, Senior Energy
Systems Engineer, Argonne National
Laboratory (Lemont, IL)
It is crucial to consider high-fidelity
weather data and climate projections in
grid models in order to capture future
weather trends, extremes, and
uncertainties. However, traditional
power system studies often overlook
many of these considerations and rely
solely on historical weather data. To
address this challenge, we develop a
computationally manageable framework
to process high-quality representations
of climate data for use with power
system models. The framework includes
a three-stage architecture to select
representative regions and periods, and
also identify periods of extreme weather
conditions after translating climate data
(temperature, wind-speed, etc.) into grid
inputs (load, power generation profiles
and outage probabilities). The
framework also models and represents
uncertainty of future weather events
based on ensembles of climate model
simulations. The outcome of the
framework is a set of processed grid
inputs in time series format that capture
the impact of climate features on the
system. This includes grid inputs
directly converted from weather
variables at the cell level, as well as
those from representative regions and
time periods, those representing the
impact from extreme weather events,
and their associated uncertainties. We
apply this computational framework to
translate downscaled climate
projections generated by three different
global climate models, encompassing
over 60 different weather variables at
12-km geographic and 3-hour temporal
resolution for all North America. We
then demonstrate how consideration of
high-quality climate-driven grid inputs
in electricity system models impacts
optimal long-term planning decisions.
Capturing future weather conditions
and associated uncertainties is
becoming important as power systems,
and their associated markets, are being
PO 00000
Frm 00054
Fmt 4703
Sfmt 4703
impacted by both efforts to decarbonize
the effects of a changing climate. These
are also important considerations when
updating market designs to maintain
reliability and economic efficiency as
the underlying power system evolves. In
addition, capturing weather uncertainty
is critical for risk-aware decision
making. Therefore, this work provides a
valuable resource for power system
modelers by bridging the gap between
climate models and grid models to help
ensure that long-term system planning
decisions are informed by the impacts of
future climate conditions.
Session W–B2 (Wednesday, June 28,
12:30 p.m.) (Hearing Room One)
Enhancing Decision Support for
Electricity Markets With Machine
Learning
Yury Dvorkin, Faculty, Johns Hopkins
University (Baltimore, MD)
Robert Ferrando, Graduate Assistant,
University of Arizona (Tucson, AZ)
Laurent Pagnier, Assistant Professor,
University of Arizona (Tucson, AZ)
Zhirui Liang, Ph.D. Student, Johns
Hopkins University (Baltimore, MD)
Daniel Bienstock, Professor, Columbia
University (New York, NY)
Michael Chertkov, Professor, University
of Arizona (Tucson, AZ)
This presentation describes how
machine learning can be leveraged to
enhance computational speed of dayahead and real-time unit commitment
and optimal power flow routines, which
are at the core of market-clearing
procedures in US ISOs. Our machine
learning architecture embeds both
power flow physics and market design
properties (e.g., cost recovery and
revenue adequacy) into the training
stage, which increases accuracy of
computations and preserves a
relationship between primal (dispatch)
and dual (prices) variables. The
accuracy and scalability of the proposed
method is tested on a realistic 1814-bus
NYISO system with current and future
renewable energy penetration levels. We
also demonstrate ∼100x gain in
computations relative to traditional
optimization approaches.
Synergistic Integration of Machine
Learning and Mathematical
Optimization for Sub-Hourly Unit
Commitment
Jianghua Wu, Ph.D. Candidate,
University of Connecticut (Vernon,
CT)
Dr. Zongjie Wang, Assistant Professor,
University of Connecticut (Storrs, CT)
Dr. Yonghong Chen, Consulting
Advisor, Midcontinent ISO (Carmel,
IN)
E:\FR\FM\21JNN1.SGM
21JNN1
lotter on DSK11XQN23PROD with NOTICES1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Dr. Bing Yan, Assistant Professor,
Rochester Institute of Technology
(Rochester, NY)
Dr. Mikhail Bragin, Assistant Project
Scientist, University of California,
Riverside (Riverside, CA)
The integration of intermittent
renewables into power systems presents
significant challenges for operators due
to increased uncertainties and greater
intra-hour net load variability. Subhourly Unit Commitment (UC) has been
suggested as a solution to quickly
respond to changes in electricity supply
and demand, which is more
complicated than hourly UC because of
a higher number of time periods, and
higher dependencies among coupled
periods. Traditional optimization
methods could be time-consuming
while machine learning (ML) may have
additional feasibility concerns. To
address these challenges, a hybrid
approach based on synergistic
integration of ML and optimization is
developed. This novel approach adopts
our recent decomposition and
coordination Surrogate Absolute-Value
Lagrangian Relaxation (SAVLR) method
with efficient coordination and
accelerated convergence. ML is then
used to quickly predict SAVLR
subproblem solutions. Compared to
those of the original overall problem,
subproblem solutions are much easier to
learn. Nevertheless, predicting ‘‘good’’
subproblem solutions is still challenging
because of the ‘‘jumps’’ of binary
decisions and many types of unit-level
constraints. To overcome these issues, a
generic ML model, embedding recurrent
neural networks (RNNs) and the
Attention mechanism in the encoderand-decoder structure, is developed.
Because of the features of RNNs and
Attention, this generic model can learn
different subproblem solutions to
reduce the training effort, and can
provide time-based predictions to
capture dependencies. In addition, to
resolve the limitation of ML in handling
constraints, a rule-based feasibility layer
is incorporated in the predicting
process, ensuring feasibility with
respect to unit-level constraints. Testing
on the IEEE 118-bus system
demonstrates the effectiveness of our
approach, providing feasible and
accurate subproblem solutions quickly,
and obtaining near-optimal overall
solutions efficiently.
Boosting Power System Operation
Economics Via Closed-Loop Predictand-Optimize
Dr. Lei Wu, Anson Wood Burchard
Chair Professor, Stevens Institute of
Technology (Hoboken, NJ)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Xianbang Chen, Ph.D. Candidate,
Stevens Institute of Technology
(Hoboken, NJ)
By and large, power system
operations are implemented by
Independent System Operators (ISO) in
an open-loop predict-then-optimize (O–
PO) process. First, the uncertainty
realizations (e.g., renewable energy
availability) are predicted as accurately
as possible. Taking the predictions as
inputs, day-ahead unit commitment and
real-time economic dispatch problems
are then optimally resolved for
determining the operation plan (i.e.,
optimization). The operation goal is to
achieve the minimum system operation
cost, i.e., the optimal operation
economics. However, the operation
economics could suffer from the openloop process because its predictions
may be myopic to the optimizations,
i.e., the predictions seek to improve the
immediate statistical prediction errors
(i.e., accuracy-oriented) instead of the
ultimate operation economics. To this
end, we propose to improve operation
economics by closing the open loop
between the prediction and the
optimization, i.e., a closed-loop predictand-optimize (C–PO) idea. Specifically,
two C–PO frameworks are designed,
including a feature-driven C–PO
framework and a bilevel mixed-integer
program (MIP) C–PO framework. Their
core is to feed the induced operation
cost back for training the predictor and
measuring the prediction quality with
the operation cost (i.e., cost-oriented).
As a result, the prediction and the
optimization can be implemented
jointly in a single framework. Based on
real-world data, the feature-driven C–PO
is compared to the traditional O–PO,
showing noticeable improvement in
operation economics, although with
slightly compromised prediction
accuracy for certain cases. The
experiments on a large-size system show
that the C–PO has potential in a realworld application. The bilevel MIP C–
PO is more versatile than the featuredriven C–PO. Based on an IEEE 118-bus
system, the bilevel MIP C–PO is
compared to the state-of-the-art methods
of handling uncertainties, i.e., stochastic
programming and robust optimization.
The case studies show that the bilevel
MIP C–PO is economically competitive
with the state-of-the-art methods but is
more compatible with the current
operational practice.
Privacy-Preserving Synthetic Dataset
Generation for Power Systems Research
Dr. Vladimir Dvorkin, Postdoctoral
Fellow, Massachusetts Institute of
Technology (Cambridge, MA)
PO 00000
Frm 00055
Fmt 4703
Sfmt 4703
40247
Dr. Audun Botterud, Principal Research
Scientist, Massachusetts Institute of
Technology (Cambridge, MA)
Power systems research heavily relies
on the availability of real-world power
system datasets (network parameters,
time series, etc.). However, data owners,
such as system operators, are often
hesitant to share their data due to valid
security and privacy concerns. To
overcome these challenges, we have
developed state-of-the-art algorithms
that enable the synthetic generation of
optimization and machine learning
datasets for the power systems industry.
Our algorithms take real-world datasets
as input and output their synthetic,
perturbed versions that maintain the
accuracy of the original data on specific
problem classes, such as power system
dispatch and wind power forecasting.
Importantly, the original data remains
undisclosed, effectively controlling the
privacy risk in data releases. To ensure
privacy preservation, we employ
rigorous perturbation techniques of
differential privacy that strictly control
the amount of privacy loss.
Furthermore, we preserve the accuracy
of original data through post-processing
convex optimization. Our algorithms
have many applications, including
synthetic generation of transmission
parameters and renewable generation
records. We have open-sourced our
algorithms to encourage their use by
interested parties. For more information,
please visit our GitHub repository at
https://github.com/wdvorkin/
SyntheticData.
Session W–A3 (Wednesday, June 28,
3:30 p.m.) (Commission Meeting Room)
Parallel Interior-Point Solver for
Security Constrained ACOPF Problems
on SIMD/GPU Architectures
Dr. Mihai Anitescu, Senior
Mathematician, Argonne National
Laboratory (Lemont, IL)
Franc
¸ois Pacaud, Assistant Professor,
Ecole des Mines (Paris, France)
Michel Schanen, Computer Scientist,
Argonne National Laboratory
(Lemont, IL)
Sungho Shin, Postdoctoral Scientist,
Argonne National Laboratory
(Lemont, IL)
Daniel Adrian Maldonado, Assistant
Energy Systems Scientist, Argonne
National Laboratory (Lemont, IL)
We investigate how to port the
standard interior-point method for
security constrained ACOPF problems,
which are block-structured nonlinear
programs with state equations, on
SIMD/GPU architectures.
Computationally, we decompose the
interior-point algorithm into two
E:\FR\FM\21JNN1.SGM
21JNN1
40248
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
successive operations: the evaluation of
the derivatives and the solution of the
associated Karush-Kuhn-Tucker (KKT)
linear system. Our method accelerates
both operations using two levels of
parallelism. First, we distribute the
computations on multiple processes
using coarse parallelism. Second, each
process uses a SIMD/GPU accelerator
locally to accelerate the operations
using fine-grained parallelism. The KKT
system is reduced by eliminating the
inequalities and the state variables from
the corresponding equations, to a dense
matrix encoding the sensitivities of the
problem’s degrees of freedom,
drastically minimizing the memory
exchange. Our experiments on SIMD/
GPU with security-constrained AC
optimal power flow problem show that
the method can achieve a 50x speed-up
compared to the state-of-the-art method.
The Need for More Rigorous Calculation
of Shadow Prices and LMPs
Dr. Xiaoming Feng, Research Fellow,
Hitachi Energy (Raleigh, NC)
LMPs (locational Marginal Prices) are
used in nodal electricity markets to
determine payments or charges to
market participants. Due to the great
monetary impact, it is imperative LMP
is defined rigorously and calculated
consistently. It has been observed the
current method of shadow price and
LMP calculation could produce values
that are non-unique under certain
conditions, which might signal noneconomic incentives to the market. We
start with formal definitions for shadow
price and LMP and present the
properties of the perturbation functions
and their computational consequences.
We use simple examples to illustrate the
discrepancy between theoretical shadow
price and the shadow price calculated
by state-of-the-art optimization solvers.
From the discussion, we make the case
for more rigorous calculation of both
shadow prices and LMPs.
lotter on DSK11XQN23PROD with NOTICES1
Real-Time Market Enhancements for
Reliability and Efficiency
Dr. Mort Webster, Professor of Energy
Engineering, Pennsylvania State
University (University Park, PA)
Dr. Anthony Giacomoni, Manager,
Advanced Analytics, PJM
Interconnection (Audubon, PA)
Aravind Retna Kumar, Ph.D. Candidate,
Pennsylvania State University
(University Park, PA)
Sushant Varghese, Ph.D. Candidate,
Pennsylvania State University
(University Park, PA)
Shailesh Wasti, Ph.D. Candidate,
Pennsylvania State University
(University Park, PA)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
The projected trends in the U.S.
power system, increasing wind and
solar generation and retiring fossil fuel
generation, will increase the net load
variability and forecast uncertainty over
the next several decades. There has been
considerable research focusing on how
to provide more flexibility to the power
system. Within this line of research,
numerous market design proposals have
been explored: multi-interval dispatch,
ramp products, stochastic market
clearing, an increase in flexible
resources (virtual power plants (VPP),
energy storage). Although flexibility is
often cited as an objective the outcomes
of concern are reliability (unserved
demand and reserve shortages),
efficiency (reducing bid production cost
and uplift payments), curtailment of
renewable generation, and incentives for
future flexible resources (i.e., price
formation). In the U.S., Independent
System Operator (ISO) and Regional
Transmission Organization (RTO) realtime market clearing and operations
have the following properties: they
operate on a rolling horizon basis
throughout the operating day, face
changing forecasts throughout the day
with forecast errors, and frequently
solve a real-time unit commitment
(RUC), which is separate from the realtime dispatch. In contrast, most of the
analysis and academic literature on
market design enhancements neglect
one or more of these characteristics in
their analysis framework. The
separation of commitment from
dispatch raises the question: which
market enhancement in which clearing
engine? In this work, we present a
simulation framework for the PJM
wholesale energy markets with a rolling
horizon and forecast errors. Specifically,
we simulate the solution of the dayahead market, followed by PJM’s
Intermediate-Term Security Constrained
Economic Dispatch (IT–SCED) (realtime commitment process) every 15
minutes and PJM’s Real-Time Security
Constrained Economic Dispatch (RT–
SCED) (real-time dispatch) every 5
minutes throughout the operating day.
Net load forecasts change every 5
minutes. We use this framework to
simulate several of the commonly
discussed market enhancements applied
to either IT–SCED, RT–SCED, or both.
We consider multi-interval dispatch,
ramp products, and stochastic market
clearing. Our results demonstrate that
market design changes are most
successful if they addresses both
commitment (bringing enough capacity
and operating range online) and
dispatch (using the online operating
range effectively).
PO 00000
Frm 00056
Fmt 4703
Sfmt 4703
Economics of Grid-Supported Electric
Power Markets: A Fundamental
Reconsideration
Dr. Leigh Tesfatsion, Research Professor
of Economics, Courtesy Research
Professor of Electrical & Computer
Engineering, Iowa State University
(Ames, IA)
U.S. RTO/ISO-managed wholesale
power markets operating over highvoltage AC transmission grids are
transitioning from heavy reliance on
fossil-fuel based power to greater
reliance on renewable power. This
presentation highlights four
conceptually-problematic economic
presumptions reflected in the legacy
core design of these markets that are
hindering this transition. The key
problematic presumption is the static
conceptualization of the basic
transacted product as grid-delivered
energy (MWh) competitively priced at
designated grid delivery locations
during successive operating periods,
supported by ancillary services. The
presentation then discusses an
alternative conceptually-consistent
‘‘Linked Swing-Contract Market Design’’
that appears well-suited for the scalable
support of increasingly decarbonized
grid operations with more active
participation by demand-side resources.
This alternative design entails a
fundamental switch to a dynamic
insurance focus on advance reserve
procurement permitting continual
balancing of real-time net load. Reserve
consists of the guaranteed availability of
diverse power-path production
capabilities for possible RTO/ISO
dispatch during future operating
periods, as protection against
volumetric grid risk. Each reserve offer
submitted by a dispatchable power
resource m to a forward reserve market
M(T) for a future operating period T is
a two-part pricing swing-contract in
firm or option form that permits m to
ensure its revenue sufficiency.
Session W–B3 (Wednesday, June 28,
3:30 p.m.) (Hearing Room One)
Simulation of Wholesale Electricity
Markets With Capacity Expansion and
Production Cost Models To Understand
Feedback Between Short Term Market
Procedures and Long Term Investment
Incentives
Dr. Jesse Holzer, Mathematician, Pacific
Northwest National Laboratory
(Richland, WA)
Dr. Abhishek Somani, Electrical
Engineer, Pacific Northwest National
Laboratory (Richland, WA)
Dr. Brent Eldridge, Electrical Engineer,
Pacific Northwest National Laboratory
(Bel Air, MD)
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
Diane Baldwin, Project Manager, Pacific
Northwest National Laboratory
(Richland, WA)
Wholesale electricity markets are
undergoing rapid changes, including
variability and uncertainty and low
prices from wind and solar, load
flexibility and price responsiveness,
distributed energy resources, energy
storage, and revenue adequacy
concerns. In response to these changes,
enhancements to electricity market
procedures have been proposed,
including new reserve product, sloped
reserve demand curves, multisettlement forward markets, and
stochastic modeling in market clearing
optimization engines. These
enhancements have the potential to
improve operational outcomes in the
short term time scale of hours to days
by enabling better market responses to
the changing market conditions. But
they also affect the long run incentives
for investment in grid equipment that
ultimately result in the mix and
capacity of various grid technologies.
This mix in turn influences short term
market conditions. We use linked
models of capacity expansion and
production cost to explore this feedback
between short term and long term
market conditions and to shed light on
how this feedback affects the assessment
of market enhancements to address
changing market conditions.
lotter on DSK11XQN23PROD with NOTICES1
Making the Right Resource Choice
Requires Making the Right Model
Choice
Dr. Rodney Kizito, Senior Manager,
Ascend Analytics (Boulder, CO)
Gary W. Dorris, Ph.D., CEO, Ascend
Analytics (Boulder, CO)
David Millar, Director of Consulting
Services, Ascend Analytics (Boulder,
CO)
Production cost modeling simulates
the operation of electric systems. It
provides a lens into a highly uncertain
future, allowing utilities to craft strategy
and make critical decisions for their
customers, shareholders, and
stakeholders. The power and acuity of
this lens will determine what resources
will be deemed the most economic to
provide a reliable, lower-carbon supply
portfolio. Resource planning using
production cost models that simulate
the operation of power systems, once a
straightforward exercise of deciding
how many new power plants would be
needed to meet future load growth, has
become a much more complicated and
challenging enterprise. The dramatic
decline in the cost of renewables and
storage technologies and the societal
push for decarbonization means
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
planners must model more complex and
uncertain portfolio options. Renewables
and their meteorologically determined
fuel supply are creating new dynamics
that highlight the need for more
powerful modeling tools to capture the
increasing variability in the power
supply and the ensuing effect on market
price volatility. This presentation
highlights the benefits of using a new
class of resource planning models to
plan for a decarbonized future. Utilities,
regulators, independent system
operators, and other industry
stakeholders rely heavily on modeling
to support decision making for the
allocation of scarce capital resources, as
well as to ensure that the right resources
are available to maintain a high level of
reliability and resilience. This
presentation argues that the older
generations of models that remain
widely in use today fail to capture the
emerging dynamics of a power grid
supplied primarily by renewable energy.
For this reason, industry decision
makers are unknowingly burdened by
‘‘model-limited choice,’’ which can lead
to imprudent investments in assets
liable to become functionally useless
and ultimately disallowed. This
presentation also provides a new
terminology to classify a model’s ability
to capture the new market dynamics,
high-definition production cost models
(HD PCMs) versus traditional
production cost models (PCMs). HD
PCMs use simulation to capture the
stochastic nature of load and electricity
production generated by renew able
energy sources, as well as to drill down
to a 5-minute level of temporal and
spatial (i.e., nodal) granularity to
capture the flexibility requirements of
renewable integration. Further, HD
PCMs mimic real-world uncertainty by
simulating imperfect foresight of future
system conditions between the dayahead forecast and the real-time
dispatch. Traditional PCMs are highly
simplified because they were developed
when computing power was a
significant limitation. Today, resource
planners can take advantage of the rapid
increase in computing power provided
by distributed computing to upgrade
their analytical platforms to enable HD
PCMs that provide more robust analysis.
Transmission Shortage Pricing By MWMile Based Demand Curve
Sina Gharebaghi, Graduate Research
Assistant, Pennsylvania State
University, Hitachi Energy (University
Park, PA)
Dr. Xiaoming Feng, Research Fellow,
Hitachi Energy (Raleigh, NC)
PO 00000
Frm 00057
Fmt 4703
Sfmt 4703
40249
ISOs use transmission demand curves
(TDC) in security constrained unit
commitment (SCUC) to relax
transmission constraints when no
feasible solution exists with hard
transmission constraints. TDC is a
penalty curve administratively specified
as a function of the amount of MW
violation of the transmission line’s
limits. Use of TDCs to ensure non-empty
feasible solution space can result in
excessively high LMP when multiple
TDCs are active. Researchers have
studied a transmission constraint
screening approach to remove
‘redundant constraints’ of serially
connected transmission lines before the
pricing run to avoid the accumulation of
high shadow prices over multiple
redundant constraints for LMP
calculation. The screening approach
alleviates to a large degree the
occurrence of excessive LMP but has
subtle and significant unintended
consequences with respect to SCUC
solution stability. We propose an
alternative approach using MW-Mile
based TDC to solve the transmission
constraint violation problem and
eliminate the root cause of excessive
LMP without the need to remove
redundant constraints. We discuss the
economic justification of the MW-Mile
based TDC approach and its advantage
of solution stability with illustrative
examples.
Grid OS—A Modern Software Portfolio
for Grid Orchestration
Renan Giovanini, Ph.D., MBA,
Transmission Product Marketing
Director, General Electric (Edinburgh,
United Kingdom)
Joseph Franz, Senior Marketing
Manager, General Electric
(Melbourne, FL)
The 21st century has brought new
challenges for Transmission and
Distribution Operators that were hardly
perceived in the turn of the century.
There have been fast increases in bulk
and micro renewable resources in
conjunction with international
agreements on CO2 emission targets.
Severe droughts, and more frequent
floods happening in the same country
are driving needs also. An increasing
number of changing weather patterns
creating disruptions at several levels.
Data tsunami has been created due to
increasing types and number of sensors
installed in the field. The grid itself was
initially designed in the early 1900s
based on a uni-directional flow
requirement now is called to become bidirectional. Previous electric software
solutions were created very organically
since late 1970s/early 1980s addressing
E:\FR\FM\21JNN1.SGM
21JNN1
40250
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
use-cases from that era. New tools were
created over time, but always bolted-on
to existent solutions. Energy
Management Systems became more and
more complex and started to present
challenges in terms of scalability and
maintainability leading to increasing
staff and costs. Previous well defined
siloes between Generation,
Transmission and Distribution are
becoming more blurred. In order to
address all of these challenges, utilities
and software companies started a
journey to re-invent itself. Based on the
most recent digital technologies, these
companies created new modular and
composable solution prepared for ultrascaling and immense amounts of data
ready to leverage the most modern
mathematical algorithms and artificial
intelligence methods available to date
for assisted and automated control. The
need for project executions in months as
opposed to years has been taken
carefully in consideration, creating a
software solution ready for faster timeto-value. These solutions are already in
production at a few customers and a
number of new use-cases are currently
under proof-of-concept, development or
available for productization. The
presentation will cover some of these
latest software developments and
highlight regulatory challenges to
slowing the adoption of these
technologies by utilities: 1. A new
market system prepared to validate &
clear more frequent and increasing
number of bids with smaller amounts of
power; 2. Digital twin technologies such
as digital dynamic line ratings ready to
integrate electrical and weather data to
provide real-time and forecast ampacity
for transmission lines integrated to realtime and look-ahead security
assessment systems; 3. Advanced
forecasting solutions based on AI for (1)
renewable power production at T&D
levels and (2) outage predictions for
improved crew allocation and faster
restoration times; 4. Optimal system
restoration management in real-time in
assisted and automated modes; 5.
Exploration of Distributed Energy
Resource to supply grid services at
transmission level such as grid
stabilization and blackstart restoration.
lotter on DSK11XQN23PROD with NOTICES1
Day 3—Thursday, June 29
Session H1 (Thursday, June 29, 9:30
a.m.) (Commission Meeting Room)
Integration of DER Aggregations in ISOScale SCUC Models
Dr. Brent Eldridge, Electrical Engineer,
Pacific Northwest National Laboratory
(Bel Air, MD)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Jesse Holzer, Mathematician, Pacific
Northwest National Laboratory
(Richland, WA)
Abhishek Somani, Economist, Pacific
Northwest National Laboratory
(Richland, WA)
Eran Schweitzer, Electrical Engineer,
Pacific Northwest National Laboratory
(Richland, WA)
Rabayet Sadnan, Electrical Engineer,
Pacific Northwest National Laboratory
(Richland, WA)
Nawaf Nazir, Electrical Engineer, Pacific
Northwest National Laboratory
(Richland, WA)
Soumya Kundu, Electrical Engineer,
Pacific Northwest National Laboratory
(Richland, WA)
FERC issued Order 2222 in September
2020, which will require all ISOs in the
U.S. to implement participation models
for DER aggregators. Among other
requirements, this rule required ISOs to
lower the participation threshold for
wholesale market participation to 0.1
MW. Wider participation of these
resources can bring significant benefits
to the grid, such as by locating energy
supply closer to demand, opening up
more participation from the demand
side, and providing an additional
flexibility source to balance intermittent
renewables. However, DER aggregations
will have unique characteristics that
may pose challenges to the large-scale
security-constrained unit commitment
(SCUC) software used by ISOs. This
presentation will focus on the
formulation of a new mathematical
model to represent the internal
constraints of a DER aggregator and the
study design that is intended to better
understand the challenges associated
with DER integration.
Current-Voltage AC Optimal Power
Flow for Unbalanced Distribution
Network
Dr. Mojdeh Khorsand Hedman,
Assistant Professor, Arizona State
University (Tempe, AZ)
Zahra Soltani, Ph.D. Candidate, Arizona
State University (Tempe, AZ)
Dr. Shanshan Ma, Postdoctoral Research
Scholar, Arizona State University (Las
Vegas, NV)
With proliferation of distributed
energy resources (DERs), distribution
management systems (DMSs) need to be
advanced in order to enhance the
reliability and efficiency of modern
distribution systems. This work
proposes novel nonlinear and convex
AC optimal power flow (ACOPF)
models based on current-voltage
(IVACOPF) formulation for an
unbalanced distribution system with
DERs. In the proposed formulation,
PO 00000
Frm 00058
Fmt 4703
Sfmt 4703
untransposed distribution lines, shunt
elements of distribution lines, and
detailed representation of distribution
transformers and DERs are modeled.
The proposed nonlinear IVACOPF
model is linearized and convexified
using the Taylor series. The
performance of the proposed nonlinear
and convex IVACOPF approaches is
compared with OpenDSS and the
widely used LinDistFlow method for
modeling unbalanced distribution
systems. The proposed accurate convex
IVACOPF model has multiple
applications for distribution system
management, planning, and operation.
Applications of the proposed model on
two key parts of advanced DMS, (i)
DERs scheduling and (ii) simultaneous
topology processor and state estimation,
will be presented. Two models are
developed including Quadratic
Programming (QP) and linear
programming (LP) for performing the
distribution state estimation. The
performance of the methods is
compared. The proposed models are
tested using distribution feeder of an
electric utility in Arizona.
Empowering Electricity Markets
Through Distributed Energy Resources
and Smart Building Setpoint
Optimization: A Graph Neural NetworkBased Deep Reinforcement Learning
Approach
Dr. You Lin, Postdoctoral Associate,
Massachusetts Institute of Technology
(Cambridge, MA)
Dr. Audun Botterud, Principal Research
Scientist, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Daisy Green, Postdoctoral Associate,
Massachusetts Institute of Technology
(Cambridge, MA)
Dr. Leslie Norford, Professor,
Massachusetts Institute of Technology
(Cambridge, MA)
Dr. Jeremy Gregory, Executive Director
of Climate and Sustainability
Consortium, Massachusetts Institute
of Technology (Cambridge, MA)
Smart buildings play a pivotal role in
the electricity market by boosting energy
efficiency and demand flexibility by
implementing advanced control
strategies. In this study, a setpoint
optimization model is proposed using a
graph neural network-based deep
reinforcement learning (DRL) algorithm
that considers thermal exchanges among
various zones within buildings. By
intelligently scheduling the day-ahead
temperature setpoints and adjusting the
real-time setpoints in response to
dynamic conditions and price signals,
DRL-based controllers can optimize
energy consumption while reducing
overall costs. This strategic energy
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
management not only benefits building
occupants but also bolsters the
electricity grid through load balancing
and the provision of essential grid
services. Through the testbed of MIT
campus buildings, it is demonstrated
that smart buildings employing DRL for
setpoint optimization contribute to a
more efficient, reliable, and sustainable
electricity market.
Multi-Timescale Operations of NuclearRenewable Hybrid Energy Systems for
Reserve and Thermal Products
Provision
Jie Zhang, Associate Professor,
University of Texas at Dallas
(Richardson, TX)
Jubeyer Rahman, Ph.D. Student,
University of Texas at Dallas
(Richardson, TX)
This talk will present an optimal
operation strategy of a nuclearrenewable hybrid energy system (N–R
HES), in conjunction with a district
heating network, which is developed
within a comprehensive multi-timescale
electricity market framework. The gridconnected N–R HES is simulated to
explore the capabilities and benefits of
N–R HES of providing energy products,
different reserve products, and thermal
products. An N–R HES optimization
and control strategy is formulated to
exploit the benefits from the hybrid
energy system in terms of both energy
and ancillary services. A case study is
performed on the customized NREL–118
bus test system with high renewable
penetrations, based on a multitimescale
(i.e., three-cycle) production cost model.
Both day-ahead and real-time market
clearing prices are determined from the
market model simulation. The results
show that the N–R HES can contribute
to the reserve requirements and also
meet the thermal load, thereby
increasing the economic efficiency of
N–R HES (with increased revenue
ranging from 1.55% to 35.25% at certain
cases) compared to the baseline case
where reserve and thermal power
exports are not optimized.
lotter on DSK11XQN23PROD with NOTICES1
Session H2 (Thursday, June 29, 12:30
p.m.) (Commission Meeting Room)
Optimizing Stand-Alone Battery Storage
Operations Scheduling Under
Uncertainties in German Residential
Electricity Market Using Stochastic Dual
Dynamic Programming
Pattanun Chanpiwat, Doctoral
Candidate, University of Maryland
(College Park, MD) & Aalto University
(Espoo, Finland) (Silver Spring, MD)
Fabricio Oliveira, Ph.D., Associate
Professor, Aalto University (Espoo,
Finland)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Steven A. Gabriel, Ph.D., Full Professor,
University of Maryland (College Park,
MD)
We present a new variation of the
stochastic dual dynamic programming
(SDDP) algorithm for solving multistage,
convex stochastic programming
problems considering uncertainties such
as electricity prices, variable renewable
energy generation, and residential
demand in the electricity market. We
approximate the convex expected-costto-go functions via a linear policy graph,
to obtain optimal operational strategies
for the battery storage usage of
residential households. We develop a
heuristic algorithm (i.e., executable on
edge-computing devices located at the
households) of a residential electricity
network with a flexible structure that
allows residents to efficiently hedge
their electricity consumption via
community-shared battery storage while
accounting for uncertainties and
limitations of the energy system. We
provide an economic assessment and
insights into battery storage scheduling
strategies and the model capabilities
through case studies on a test network
model of Southern German residential
households. The results are compared
with other mathematical models
including a multistage stochastic convex
optimization model with the
assumptions of a perfect information
case and/or a business-as-usual case.
Integration of Hybrid Storage Resources
Into Wholesale Electricity Markets
Dr. Nikita Singhal, Technical Leader,
Electric Power Research Institute
(Palo Alto, CA)
Rajni Kant Bansal, Ph.D. Candidate,
Johns Hopkins University (Baltimore,
MD)
Dr. Erik Ela, Program Manager, Electric
Power Research Institute (Palo Alto,
CA)
Dr. Julie Mulvaney Kemp, Research
Scientist, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Dr. Miguel Heleno, Research Scientist,
Lawrence Berkeley National
Laboratory (Berkeley, CA)
Electric storage resources and other
technologies that are co-located and
share a common point of
interconnection are presently being
incorporated into bulk power systems in
increasing numbers, with more hybrid
storage resources planned and under
study within interconnection queues.
Such hybrid storage resources are
predominantly seen being combined
with variable energy resources and are
either being operated as two separate
resources or as a single integrated
resource. Market designers and system
PO 00000
Frm 00059
Fmt 4703
Sfmt 4703
40251
operators are presently researching ways
to effectively integrate hybrid storage
resources into their existing system
operations and scheduling processes
given the ambiguity around their
impacts, particularly when high levels
of hybrid resources are present. This
research explores advanced market
participation modeling options for
integrating utility-scale hybrid storage
resources into market clearing software
in addition to discussing the economic
and reliability implications of the
different modeling options. This
includes the consecutive impact of the
participation models on the market
clearing software solution and the
dispatch and revenue of hybrid battery
projects. The alternate participation
models evaluated in this research
include two separate resources ISOmanaged co-located participation
model, single integrated resource selfmanaged hybrid participation model
and two separate resources ISOmanaged linked co-located participation
model.
Predicting Strategic Energy Storage
Behaviors
Yuexin Bian, Ph.D. Student, University
of California, San Diego (San Diego,
CA)
Ningkun Zheng, Ph.D. Student,
Columbia University (New York City,
NY)
Yang Zheng, Assistant Professor,
University of California, San Diego
(San Diego, CA)
Bolun Xu, Assistant Professor, Columbia
University (New York, NY)
Yuanyuan Shi, Assistant Professor,
University of California, San Diego
(San Diego, CA)
Energy storage are strategic
participants in electricity markets to
arbitrage price differences. Future
power system operators must
understand and predict strategic storage
arbitrage behaviors for market power
monitoring and capacity adequacy
planning. This paper proposes a novel
data-driven approach that incorporates
prior model knowledge for predicting
the behaviors of strategic storage
participants. We propose a gradientdescent method to find the storage
model parameters given the historical
price signals and observations. We
prove that the identified model
parameters will converge to the true
user parameters under a class of
quadratic objective and linear equalityconstrained storage models. We
demonstrate the effectiveness of our
approach through numerical
experiments with synthetic and realworld storage behavior data. The
proposed approach significantly
E:\FR\FM\21JNN1.SGM
21JNN1
40252
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
improves the accuracy of storage model
identification and behavior forecasting
compared to previous blackbox datadriven approaches.
Energy Storage Participation Algorithm
Competition (ESPA-Comp)
Dr. Brent Eldridge, Electrical Engineer,
Pacific Northwest National Laboratory
(Bel Air, MD)
Jesse Holzer, Mathematician, Pacific
Northwest National Laboratory
(Richland, WA)
Abhishek Somani, Economist, Pacific
Northwest National Laboratory
(Richland, WA)
Kostas Oikonomou, Electrical Engineer,
Pacific Northwest National Laboratory
(Richland, WA)
Brittany Tarufelli, Economist, Pacific
Northwest National Laboratory
(Laramie, WY)
Li He, Electrical Engineer, Pacific
Northwest National Laboratory
(Richland, WA)
Energy Storage Participation
Algorithm Competition (ESPA-Comp) is
an upcoming pilot competition that will
challenge participants to develop
innovative algorithms for energy storage
participation in wholesale electricity
markets. Energy storage technologies
will play a critical role in making sure
we have access to reliable and low-cost
electricity. However, optimizing energy
storage systems in wholesale electricity
markets is a complex task that requires
sophisticated algorithms to accurately
predict electricity prices and account for
the physical constraints of energy
storage technologies. ESPA-Comp aims
to bring together researchers, engineers,
and students with expertise in AI/ML,
optimization, and economics to develop
algorithms that can effectively address
these challenges. In this competition,
participants will ‘‘operate’’ an energy
storage resource in a simulated
wholesale electricity market and will be
awarded based on the profits they earn.
Participants will need to submit
algorithms that generate strategic offer
curves, taking into account factors like
weather, market competition, and
network congestion. Competition results
will help us to understand how different
market designs can affect storage
incentives and support the efficient use
of storage resources.
lotter on DSK11XQN23PROD with NOTICES1
Session H3 (Thursday, June 29, 3:00
p.m.) (Commission Meeting Room)
Congestion Mitigation With
Transmission Reconfigurations in the
Evergy Footprint
Dr. Pablo A. Ruiz, CEO and CTO,
NewGrid, Inc. (Somerville, MA)
Derek Brown, Regulatory Affairs
Manager, Evergy (Topeka, KS)
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
Jeremy Harris, Transmission Operations
Planning Manager, Evergy (Topeka,
KS)
German Lorenzon, Senior Engineer,
NewGrid (Somerville, MA)
Grant Wilkerson, Director of Business
Development, Evergy (Kansas City,
MO)
Transmission needs are becoming
more variable and are rising rapidly, as
shown by significant increases in
congestion management costs and in the
frequency of transmission overloads.
Further, transmission capability has
been critical during recent extreme
events, to support power transfers from
less affected areas to the more affected
ones. Topology optimization software is
a grid-enhancing technology that
identifies reconfiguration options to reroute power flow around transmission
bottlenecks employing less utilized
facilities and satisfying reliability
criteria. These reconfigurations provide
cost savings to power customers and
increase the transmission network
performance from both reliability and
market efficiency perspectives. At the
same time, the use of reconfigurations
remains limited. For example, the usual
practice in the Southwest Power Pool is
to employ known reconfigurations as a
last resort, after resource redispatch is
exhausted and constraints are breached.
This presentation will discuss the
reliability and cost saving impacts of
reconfigurations implemented in the
Evergy footprint to mitigate congestion
under the current SPP practice, as well
as illustrate additional benefits that
could be obtained if topology
optimization opportunities were used
proactively to address congestion.
Optimal Transmission Expansion
Planning With Grid Enhancing
Technologies
Swaroop Srinivasrao Guggilam, Senior
Engineer, Electric Power Research
Institute (Knoxville, TN)
Alberto Del Rosso, Program Manager,
Electric Power Research Institute
(Knoxville, TN)
The power system is evolving with a
rapid increase in demand. It provokes
rethinking ways to increase generation
and expand the system’s capacity to
support it. This combination of fastpaced demand growth and supply has
made the planning and expansion of the
transmission system challenging in
recent years. The futuristic hyperactive
power system grid needs to be versatile.
The grid should be able to host a variety
of renewable energy resources, adapt to
various system conditions, be highly
secured under extreme events, and be
dynamically responsive to make the
PO 00000
Frm 00060
Fmt 4703
Sfmt 4703
power system reliable. All this is to be
achieved at minimal cost to the
customers and efficiently. The
traditional transmission solutions will
continue to be the backbone of the
power system transmission grid, but
upcoming state-of-the-art gridenhancing technologies can
significantly aid in supporting these
ever-changing power system grid
requirements with optimal cost and
improved efficiency. Various gridenhancing technologies include power
flow control devices such as SmartValve
devices and phase shift transformers,
dynamic and adaptive transmission line
ratings, and optimal topology control.
The increasing penetration of
distributed energy resources such as
batteries also activates a different
avenue to pursue being able to support
transmission expansion planning needs.
The term around the battery as a viable
alternative is coined as a non-wire
alternative solution. In many utilities,
it’s necessary to assess the non-wire
alternative solutions such as batteries to
meet FERC requirements. Developing
and analyzing these various modern
transmission solutions that work in
tandem is challenging. One needs
proper technical characterization of
these technologies and assess the
technology readiness. One also needs to
evaluate its performance under normal
and extreme conditions, the flexibility
to deploy and install these technologies,
calculate capital and operational costs,
understand different available control
options for these devices, and analyze
potential limitations. Suitable analytical
methods and high-performing software
tools are needed to run the optimization
simulations to enable integration and
efficient use of these grid-enhancing
technologies. EPRI has developed a
software tool called CPLANET
(Controlled PLANning Expansion Tool)
that helps identify effective and lowcost solutions for mitigating thermal
overloads in a power system over
various operating scenarios. An optimal
solution is determined from a given set
of candidate projects, including various
grid-enhancing technologies and
traditional transmission expansion
projects such as installing new
transmission lines or upgrading existing
substations. The software uses a mixedinteger linear programming formulation
in the optimization engine to identify
the least-cost solution for the grid’s
various physical and operating needs.
The scope and goal of this presentation
are to discuss the ongoing efforts at
EPRI’s forefront around grid-enhancing
technologies. Showcase the current
capabilities of the CPLANET tool and
E:\FR\FM\21JNN1.SGM
21JNN1
Federal Register / Vol. 88, No. 118 / Wednesday, June 21, 2023 / Notices
discuss case studies and share existing
challenges and future goals.
lotter on DSK11XQN23PROD with NOTICES1
The Key Role of Extended ACOPFBased Decision Making for Supporting
Clean, Cost-Effective and Reliable/
Resilient Electricity Services
Maria Iilic, Professor Emerita, Carnegie
Mellon University (Pittsburgh, PA)
Rupamathi Jaddivada, Director of
Innovation, SmartGridz (Boston, MA)
Jeffrey Lang, Vitesse Professor,
Massachusetts Institute of Technology
(Cambridge, MA)
Eric Allen, Director of Engineering,
SmartGridz (Boston, MA)
Societal objectives are rapidly moving
towards decarbonized, affordable, and
reliable/resilient electricity services. In
this talk we first revisit these objectives
by identifying basic changes and the
related challenges taking place. In
particular, decarbonization requires
planning and operations of the changing
electric energy systems so that seamless
integration of clean resources, ranging
across wind, solar, nuclear, geothermal,
and hydro, is enabled. Notably, this
must be done with an eye on generation
adequacy. Also, these new resources
present locational issues (NIMBY) in
operating the existing power grid.
Finally, the end users still must be
served without interruptions and
without being exposed to wide-spread
blackouts. Similar challenges are related
to ensuring cost-effective and reliable/
resilient services. Second, we show how
an extended (robust, adaptive, multitemporal) ACOPF is essential for
meeting these societal challenges. Pretty
much any of the new software needed
(for wind integration, resilient service,
and preventing blackouts) requires
effective optimization tools for
identifying the main bottlenecks/
obstacles to physical implementation
and for advising operators and planners
regarding the most effective remedial
actions (new investments and/or
flexible utilization). We illustrate
potential benefits from utilizing ACOPF
as a basic means of supporting software
tools needed for meeting the societal
challenges. We offer a taxonomy of such
badly needed tools and illustrate the
role of extended ACOPF estimated
benefits on several real-world systems
based on our work to-date.
Data & API Standards for Clean Energy
Solutions and Digital Innovation
Priya Barua, Director of Market Policy
and Innovation, Clean Energy Buyers
Institute (Washington, DC)
Ben Gerber, President & CEO, M–RETS
(Minneapolis, MN)
There is an opportunity for energy
attribute certificate (EAC) issuing bodies
VerDate Sep<11>2014
18:36 Jun 20, 2023
Jkt 259001
in the U.S. and abroad to enable next
generation carbon-free electricity (CFE)
procurement solutions that accelerate
grid decarbonization investments by
capturing more attributes and better
serving as a digital ‘‘platform of
platforms’’. Energy customers who buy
clean energy rely on EACs to assert
ownership claims over each megawatthour of CFE they procure for auditing,
reporting, and marketing purposes. EAC
issuing bodies promote CFE
procurement integrity and validation by
issuing, tracking, and canceling EACs,
which each represent a unique
standardized tradable instrument
representing one megawatt-hour of
verified CFE generation. By adopting
open data and automated programming
interface (API) standards, EAC issuing
bodies can improve data access and
solutions for customers. This session
will explore opportunities for EAC
issuing bodies to establish consistent,
modern automated programming
interfaces (APIs), template legal
agreements, and other tools that will
make it easier for data providers to
deliver data and for users to update the
status of EACs through connected
digital trading platforms— enabling
innovation for CFE procurement
solutions.
Mine Production Scheduling Under
Time-of-Use Power Rates With
Renewable Energy Sources
Dr. Daniel Bienstock, Professor,
Columbia University (New York, NY)
Amy Mcbrayer, Ph.D. Candidate, South
Dakota School of Mines (Rapid City,
SD)
Andrea Brickey, Professor, South Dakota
School of Mines (Rapid City, SD)
Alexandra Newman, Professor, Colorado
School of Mines (Golden, CO)
Renewable energy use on active and
reclaimed mine lands has increased
dramatically in recent years. With
mining companies focused on
increasing efficiencies, reducing carbon
intensity, and developing sustainable
mining practices, opportunity exists to
integrate data on electricity usage and
demand into mine production schedules
to capitalize on alternative energy
sources and to take advantage of
favorable pricing strategies. Utilizing
real data from an active coal mine that
has already integrated electric
equipment into their loading fleet, we
show the impacts of (i) seasonal power
price fluctuations on a medium-term
production schedule; and, (ii) hourly
power price fluctuations on a short-term
extraction schedule. Results reveal the
economic potential both for: (i) the
integration of renewable energy sources
on reclaimed and active mine lands; and
PO 00000
Frm 00061
Fmt 4703
Sfmt 4703
40253
(ii), the corresponding synchronization
of a production schedule with time-ofuse energy pricing contracts.
[FR Doc. 2023–13168 Filed 6–20–23; 8:45 am]
BILLING CODE 6717–01–P
DEPARTMENT OF ENERGY
Federal Energy Regulatory
Commission
[Docket No. ER23–2130–000]
Glover Creek Solar, LLC; Supplemental
Notice That Initial Market-Based Rate
Filing Includes Request for Blanket
Section 204 Authorization
This is a supplemental notice in the
above-referenced proceeding of Glover
Creek Solar, LLC’s application for
market-based rate authority, with an
accompanying rate tariff, noting that
such application includes a request for
blanket authorization, under 18 CFR
part 34, of future issuances of securities
and assumptions of liability.
Any person desiring to intervene or to
protest should file with the Federal
Energy Regulatory Commission, 888
First Street NE, Washington, DC 20426,
in accordance with Rules 211 and 214
of the Commission’s Rules of Practice
and Procedure (18 CFR 385.211 and
385.214). Anyone filing a motion to
intervene or protest must serve a copy
of that document on the Applicant.
Notice is hereby given that the
deadline for filing protests with regard
to the applicant’s request for blanket
authorization, under 18 CFR part 34, of
future issuances of securities and
assumptions of liability, is July 5, 2023.
The Commission encourages
electronic submission of protests and
interventions in lieu of paper, using the
FERC Online links at https://
www.ferc.gov. To facilitate electronic
service, persons with internet access
who will eFile a document and/or be
listed as a contact for an intervenor
must create and validate an
eRegistration account using the
eRegistration link. Select the eFiling
link to log on and submit the
intervention or protests.
Persons unable to file electronically
may mail similar pleadings to the
Federal Energy Regulatory Commission,
888 First Street NE, Washington, DC
20426. Hand delivered submissions in
docketed proceedings should be
delivered to Health and Human
Services, 12225 Wilkins Avenue,
Rockville, Maryland 20852.
In addition to publishing the full text
of this document in the Federal
Register, the Commission provides all
interested persons an opportunity to
E:\FR\FM\21JNN1.SGM
21JNN1
Agencies
[Federal Register Volume 88, Number 118 (Wednesday, June 21, 2023)]
[Notices]
[Pages 40234-40253]
From the Federal Register Online via the Government Publishing Office [www.gpo.gov]
[FR Doc No: 2023-13168]
-----------------------------------------------------------------------
DEPARTMENT OF ENERGY
Federal Energy Regulatory Commission
[Docket No. AD10-12-014]
Increasing Market and Planning Efficiency through Improved
Software; Second Supplemental Notice of Technical Conference on
Increasing Real-Time and Day-Ahead Market and Planning Efficiency
Through Improved Software
As first announced in the Notice of Technical Conference issued in
this proceeding on February 7, 2023, Commission staff will convene a
technical conference on June 27, 28, and 29, 2023 to discuss
opportunities for increasing real-time and day-ahead market and
planning efficiency of the bulk power system through improved software.
Attached to this Second Supplemental Notice is the agenda for the
technical conference and speakers' summaries of their presentations.
While the intent of the technical conference is not to focus on any
specific matters before the Commission, some conference discussions
might include topics at issue in proceedings that are currently pending
before the Commission, including topics related to capacity valuation
methodologies for renewable, hybrid, or storage resources. These
proceedings include, but are not limited to:
[[Page 40235]]
PJM Interconnection, L.L.C., Docket No. EL21-83-000
California Independent System Operator Corp., Docket No. ER21-2455-004
New York Independent System Operator, Inc., Docket No. ER21-2460-003
ISO New England, Inc., Docket No. ER22-983-002
PJM Interconnection, L.L.C., Docket No. ER22-962-003
Southwest Power Pool, Inc., Docket No. ER22-1697-001
Midcontinent Independent System Operator, Inc., Docket No. ER22-1640-
000
ISO New England, Inc., Docket No. EL22-42-000
Southwest Power Pool, Inc., Docket No. ER22-379-000
PJM Interconnection, L.L.C., Docket No. ER22-1200-000
California Independent System Operator Corp., Docket No. ER23-1485-000
California Independent System Operator Corp., Docket No. ER23-1533-000
California Independent System Operator Corp., Docket No. ER23-1534-000
Midcontinent Independent System Operator, Inc., Docket No. EL23-28
Midcontinent Independent System Operator, Inc., Docket No. ER23-1195
Midcontinent Independent System Operator, Inc., Docket No. EL23-46
The conference will take place in a hybrid format, with presenters
and attendees allowed to participate either in-person or virtually.
Further details on both in-person and virtual participation will be
available on the conference web page.\1\ Foreign nationals attending
in-person must register through the Commission's website on or before
June 2, 2023. We also encourage all other in-person attendees to also
register through the Commission's website on or before June 2, 2023, to
help ensure Commission staff can provide sufficient physical and
virtual facilities and to communicate with attendees in the case of
unanticipated emergencies or other changes to the conference schedule
or location. Access to the conference (virtual or in-person) may not be
available to those who do not register.
---------------------------------------------------------------------------
\1\ https://www.ferc.gov/news-events/events/increasing-real-time-and-day-ahead-market-and-planning-efficiency-through.
---------------------------------------------------------------------------
The Commission will accept comments following the conference, with
a deadline of July 28, 2023.
There is an ``eSubscription'' link on the Commission's website that
enables subscribers to receive email notification when a document is
added to a subscribed docket(s). For assistance with any FERC Online
service, please email [email protected], or call (866) 208-
3676 (toll free). For TTY, call (202) 502-8659.
FERC conferences are accessible under section 508 of the
Rehabilitation Act of 1973. For accessibility accommodations please
send an email to [email protected] or call toll free (866) 208-
3372 (voice) or (202) 502-8659 (TTY), or send a fax to (202) 208-2106
with the required accommodations.
For further information about these conferences, please contact:
Sarah McKinley (Logistical Information), Office of External Affairs,
(202) 502-8004, [email protected]
Alexander Smith (Technical Information), Office of Energy Policy and
Innovation, (202) 502-6601, [email protected]
Dated: June 14, 2023.
Debbie-Anne A. Reese,
Deputy Secretary.
[GRAPHIC] [TIFF OMITTED] TN21JN23.069
Technical Conference: Increasing Real-Time and Day-Ahead Market
Efficiency Through Improved Software
Agenda
AD10-12-014
June 27-29, 2023
Tuesday, June 27, 2023
9:15 a.m. Introduction
Elizabeth Topping, Federal Energy Regulatory Commission (Washington,
DC)
9:30 a.m. Session T1 (Commission Meeting Room)
Probabilistic Energy Adequacy Assessment under Extreme Weather Events
Jinye Zhao, ISO New England (Holyoke, MA)
Stephen George, ISO New England (Holyoke, MA)
Ke Ma, ISO New England (Holyoke, MA)
Steven Judd, ISO New England (Holyoke, MA)
Eamonn Lannoye, EPRI (Dublin, Ireland)
Juan Carlos Martin, EPRI (Madrid, Spain)
Transmission Outage Probability Estimation Based on Real-Time Weather
Forecast
Mingguo Hong, ISO New England (Holyoke, MA)
Xiaochuan Luo, ISO New England (Holyoke, MA)
Slava Maslennikov, ISO New England (Holyoke, MA)
Tongxin Zheng, ISO New England (Holyoke, MA)
Overview of MISO and PJM Hybrid Multiple Configuration Resource Model
Implementation Within PROBE Software
Qun Gu, PowerGEM (Clifton Park, NY)
Boris Gisin, PowerGEM (Clifton Park, NY)
Anthony Giacomoni, PJM Interconnection (Audubon, PA)
Chuck Hansen, Midcontinent ISO (Carmel, IN)
Optimizing Combined Cycle Units in PJM's Wholesale Energy Markets using
a Hybrid Multiple Configuration Resource Model
Anthony Giacomoni, PJM Interconnection (Audubon, PA)
Danial Nazemi, PJM Interconnection (Audubon, PA)
Qun Gu, PowerGEM (Clifton Park, NY)
Boris Gisin, PowerGEM (Clifton Park, NY)
11:30 a.m. Lunch
12:30 p.m. Session T2 (Commission Meeting Room)
Enhancements to Ramp Rate Dependent Spinning Reserve Modeling
Shubo Zhang, New York ISO (Rensselaer, NY)
John L. Meyer, New York ISO (Rensselaer, NY)
Iiro Harjunkoski, Hitachi Energy (Mannheim, Germany)
Determining Dynamic Operating Reserve Requirements for Reliability and
Efficient Market Outcomes: Tradeoffs and Price Formation Challenges
Matthew Musto, New York ISO (Rensselaer, NY)
Kanchan Upadhyay, New York ISO (Rensselaer, NY)
Edward O Lo, Hitachi Energy (San Jose, CA)
Operational Experience with Nodal Procurement of Flexible Ramping
Product
Guillermo Bautista-Alderete, California ISO (Folsom, CA)
George Angelidis, California ISO (Folsom, CA)
Yu Wan, California ISO (Folsom, CA)
[[Page 40236]]
Kun Zhao, California ISO (Folsom, CA)
Impact of DERs on Load Distribution Factors in Forecasting
Khaled Abdul-Rahman, California ISO (Folsom, CA)
Hani Alarian, California ISO (Folsom, CA)
Trevor Ludlow, California ISO (Folsom, CA)
Chiranjeevi Madvesh, California ISO (Folsom, CA)
Increased Congestion in SPP and Optimization in the Day Ahead Market
with Gurobi
Seth Mayfield, Southwest Power Pool (Little Rock, AR)
Yasser Bahbaz, Southwest Power Pool (Little Rock, AR)
3:00 p.m. Break
3:30 p.m. Session T3 (Commission Meeting Room)
MISO Operations Risk Assessment and Uncertainty Management
Congcong Wang, Midcontinent ISO (Carmel, IN)
Long Zhao, Midcontinent ISO (Carmel, IN)
Jason Howard, Midcontinent ISO (Carmel, IN)
Market Simulation Tools and Uncertainty Quantification Methods to
Support Operational Uncertainty Management
Nazif Faqiry, Midcontinent ISO (Carmel, IN)
Arezou Ghesmati, Midcontinent ISO (Carmel, IN)
Bing Huang, Midcontinent ISO (Carmel, IN)
Yonghong Chen, Midcontinent ISO (Carmel, IN)
Bernard Knueven, National Renewable Energy Laboratory (Golden, CO)
Pumped Storage Optimization in Real-time Markets under Uncertainty
Bing Huang, Midcontinent ISO (Carmel, IN)
Arezou Ghesmati, Midcontinent ISO (Carmel, IN)
Yonghong Chen, Midcontinent ISO (Carmel, IN)
Ross Baldick, University of Texas at Austin (Austin, TX)
Forecasting Aggregate Electricity Demand on a 5-minute Basis using
Machine Learning
Yinghua Wu, PJM Interconnection (Audubon, PA)
Laura Walter, PJM Interconnection (Audubon, PA)
Anthony Giacomoni, PJM Interconnection (Audubon, PA)
Long-Term Outlook for the ERCOT Grid
Pengwei Du, Electric Reliability Corporation of Texas (Austin, TX)
6:00 p.m. Adjourn
Wednesday, June 28, 2023
9:00 a.m. Session W-A1 (Commission Meeting Room)
Uncertainty-Informed Renewable Energy Scheduling: A Scalable Bilevel
Framework
Dongwei Zhao, Massachusetts Institute of Technology (Cambridge, MA)
Vladimir Dvorkin, Massachusetts Institute of Technology (Cambridge,
MA)
Stefanos Delikaraoglou, Axpo Solutions AG (Zurich, Switzerland)
Alberto J. Lamadrid L., Lehigh University (Bethlehem, PA)
Audun Botterud, Massachusetts Institute of Technology (Cambridge,
MA)
Enhancing Power System Resilience and Efficiency through Proactive
Security Assessments and the Use of powerSAS.m: A Robust, Efficient,
and Scalable Security Analysis Tool for Large-Scale Systems
Yang Liu, Argonne National Laboratory (Lemont, IL)
Feng Qiu, Argonne National Laboratory (Lemont, IL)
Jianzhe Liu, Argonne National Laboratory (Lemont, IL)
Stochastic Unit Commitment and Market Clearing in Julia with
UnitCommitment.jl
Alinson Santos Xavier, Argonne National Laboratory (Lemont, IL)
Og[uuml]n Yurdakul, Technische Universit[auml]t Berlin (Berlin,
Germany)
Aleksandr M. Kazachkov, University of Florida (Gainesville, FL)
Jun He, Purdue University (West Lafayette, IN)
Feng Qiu, Argonne National Laboratory (Lemont, IL)
Reduced-order Decomposition and Coordination Approach for Markov-based
Stochastic UC with High Penetration Level of Wind and BESS
Niranjan Raghunathan, University of Connecticut (Storrs, CT)
Peter B. Luh, University of Connecticut and National Taiwan
University (Alexandria, VA)
Zongjie Wang, University of Connecticut (Storrs, CT)
Mikhail A. Bragin, University of California, Riverside (Riverside,
CA)
Bing Yan, Rochester Institute of Technology (Rochester, NY)
Meng Yue, Brookhaven National Laboratories (Upton, NY)
Tianqiao Zhao, Brookhaven National Laboratories, (Upton, NY)
Learn to Branch and Dive for Large-scale Unit Commitment Problem
Jingtao Qin, University of California, Riverside (Riverside, CA)
Nanpeng Yu, University of California, Riverside (Riverside, CA)
Mikhail Bragin, University of Connecticut (Storrs, CT)
9:00 a.m. Session W-B1 (Hearing Room One)
Stochastic Nodal Adequacy Pricing Platform (SNAP)
Richard D. Tabors, Tabors Caramanis Rudkevich (Newton, MA)
Aleksandr Rudkevich, Newton Energy Group (Newton, MA)
Russel Philbrick, Polaris Systems Optimization (Seattle, WA)
Selin Yanikara, Newton Energy Group (Newton, MA)
Assessing Nodal Adequacy of Large Power Systems
F. Selin Yanikara, Newton Energy Group (Newton, MA)
Russ Philbrick, Polaris Systems Optimization (Seattle, WA)
Aleksandr M. Rudkevich, Newton Energy Group (Newton, MA)
Sophie Edelman, The Brattle Group (New York, NY)
Comparison of Flexibility Reserve and ORDC for Increasing System
Flexibility
Phillip de Mello, Electric Power Research Institute (Niskayuna, NY)
Erik Ela, Electric Power Research Institute (Boulder, CO)
Nikita Singhal, Electric Power Research Institute (Palo Alto, CA)
Alexandre Moreira da Silva, Lawrence Berkeley National Laboratory
(Berkeley, CA)
Miguel Heleno, Lawrence Berkeley National Laboratory (Berkeley, CA)
ABSCORES, A Novel Application of Banking Scoring and Rating for
Electricity Systems
Alberto J. Lamadrid L., Lehigh University (Bethlehem, PA)
Audun Botterud, Massachusetts Institute of Technology (Cambridge,
MA)
Jhi-Young Joo, Lawrence Livermore National Laboratory (Livermore,
CA)
Shijia Zhao, Argonne National Laboratory (Lemont, IL)
Recent Developments in the Day-ahead and Real-time Electricity Market
Design and Software Caused by the Higher Energy Costs and Emerging
Technologies--European Experience
Petr Svoboda, Unicorn Systems A.S. (Prague, Czech Republic)
[[Page 40237]]
11:30 a.m. Lunch
12:30 p.m. Session W-A2 (Commission Meeting Room)
System Resilience through Electricity System Restoration and Related
Services
Douglas Wilson, General Electric (Edinburgh, United Kingdom)
James Yu, ScottishPower Energy Networks (Glasgow, United Kingdom)
Ian Macpherson, ScottishPower Energy Networks (Glasgow, United
Kingdom)
Marta Laterza, General Electric (Glasgow, United Kingdom)
Marcos Santos, General Electric (Glasgow, United Kingdom)
Richard Davey, General Electric (Glasgow, United Kingdom)
Coordinated Cross-Border Capacity Calculation Through The FARAO Open-
Source Toolbox
Violette Berge, Artelys Canada (Montr[eacute]al, Canada)
Nicolas Omont, Artelys (Paris, France)
Advanced Scenario Selection Methods for Probabilistic Transmission
Planning Assessments
Eknath Vittal, Electric Power Research Institute (Palo Alto, CA)
Anish Gaikwad, Electric Power Research Institute (Palo Alto, CA)
Parag Mitra, Electric Power Research Institute (Palo Alto, CA)
Incorporating Climate Projections into Grid Models: Bridging the Data
Gap to Capture Weather Dependent Representative and Extreme Events and
Corresponding Uncertainties
Zhi Zhou, Argonne National Laboratory (Lemont, IL)
Neal Mann, Argonne National Laboratory (Lemont, IL)
Yanwen Xu, University of Illinois at Chicago, Urbana-Champaign
(Champaign, IL)
Zuguang Gao, University of Chicago (Chicago, IL)
Akintomide Akinsanola, University of Illinois at Chicago (Chicago,
IL)
Todd Levin, Argonne National Laboratory (Lemont, IL)
Jonghwan Kwon, Argonne National Laboratory (Lemont, IL)
Audun Botterud, Senior Energy Systems Engineer, Argonne National
Laboratory (Lemont, IL)
12:30 p.m. Session W-B2 (Hearing Room One)
Enhancing Decision Support for Electricity Markets with Machine
Learning
Yury Dvorkin, Johns Hopkins University (Baltimore, MD)
Robert Ferrando, University of Arizona (Tucson, AZ)
Laurent Pagnier, University of Arizona (Tucson, AZ)
Zhirui Liang, Johns Hopkins University (Baltimore, MD)
Daniel Bienstock, Columbia University (New York, NY)
Michael Chertkov, University of Arizona (Tucson, AZ)
Boosting Power System Operation Economics via Closed-loop Predict-and-
Optimize
Lei Wu, Stevens Institute of Technology (Hoboken, NJ)
Xianbang Chen, Stevens Institute of Technology (Hoboken, NJ)
Synergistic Integration of Machine Learning and Mathematical
Optimization for Sub-hourly Unit Commitment
Jianghua Wu, University of Connecticut (Storrs, CT)
Zongjie Wang, University of Connecticut (Storrs, CT)
Yonghong Chen, MIDCONTINENT ISO (Carmel, IN)
Bing Yan, Rochester Institute of Technology (Rochester, NY)
Mikhail Bragin, University of California, Riverside (Riverside, CA)
Privacy-Preserving Synthetic Dataset Generation for Power Systems
Research
Vladimir Dvorkin, Massachusetts Institute of Technology (Cambridge,
MA)
Audun Botterud, Massachusetts Institute of Technology (Cambridge,
MA)
2:30 p.m. Break
3:00 p.m. Session W-A3 (Commission Meeting Room)
Parallel Interior-Point Solver for Security Constrained ACOPF problems
on SIMD/GPU Architectures
Mihai Anitescu, Argonne National Laboratory (Lemont, IL)
Fran[ccedil]ois Pacaud, Ecole des Mines (Paris, France)
Michel Schanen, Argonne National Laboratory (Lemont, IL)
Sungho Shin, Argonne National Laboratory (Lemont, IL)
Daniel Adrian Maldonado, Argonne National Laboratory (Lemont, IL)
The Need for More Rigorous Calculation of Shadow Prices and LMPs
Xiaoming Feng, Hitachi Energy (Raleigh, NC)
Real-Time Market Enhancements for Reliability and Efficiency
Mort Webster, Pennsylvania State University (University Park, PA)
Anthony Giacomoni, PJM Interconnection (Audubon, PA)
Aravind Retna Kumar, Pennsylvania State University (University
Park, PA)
Sushant Varghese, Pennsylvania State University (University Park,
PA)
Shailesh Wasti, Pennsylvania State University (University Park, PA)
Economics of Grid-Supported Electric Power Markets: A Fundamental
Reconsideration
Leigh Tesfatsion, Iowa State University (Ames, IA)
3:00 p.m. Session W-B3 (Hearing Room One)
Simulation of Wholesale Electricity Markets with Capacity Expansion and
Production Cost Models to Understand Feedback between Short-Term Market
Procedures and Long-Term Investment Incentives
Jesse Holzer, Pacific Northwest National Laboratory (Richland, WA)
Abhishek Somani, Pacific Northwest National Laboratory (Richland,
WA)
Brent Eldridge, Pacific Northwest National Laboratory (Bel Air, MD)
Diane Baldwin, Pacific Northwest National Laboratory (Richland, WA)
Making the Right Resource Choice Requires Making the Right Model Choice
Rodney Kizito, Ascend Analytics (Wheaton, MD)
Gary W. Dorris, Ascend Analytics, CEO (Boulder, CO)
David Millar, Ascend Analytics (Boulder, CO)
Transmission Shortage Pricing By MW-Mile Based Demand Curve
Sina Gharebaghi, Pennsylvania State University (University Park,
PA)
Xiaoming Feng, Hitachi Energy (Raleigh, NC)
Grid OS--A Modern Software Portfolio for Grid Orchestration
Renan Giovanini, General Electric (Edinburgh, UK)
Joseph Franz, General Electric (Melbourne, FL)
5:00 p.m. Adjourn
Thursday, June 29, 2023
9:30 a.m. Session H1 (Commission Meeting Room)
Integration of DER Aggregations in ISO-Scale SCUC Models
Brent Eldridge, Pacific Northwest National Laboratory (Bel Air, MD)
Jesse Holzer, Pacific Northwest National Laboratory (Richland, WA)
Abhishek Somani, Pacific Northwest National Laboratory (Richland,
WA)
Eran Schweitzer, Pacific Northwest National Laboratory (Richland,
WA)
Rabayet Sadnan, Pacific Northwest National Laboratory (Richland,
WA)
Nawaf Nazir, Pacific Northwest National Laboratory (Richland, WA)
[[Page 40238]]
Soumya Kundu, Pacific Northwest National Laboratory (Richland, WA)
Current-Voltage AC Optimal Power Flow for Unbalanced Distribution
Network
Mojdeh Khorsand Hedman, Arizona State University (Tempe, AZ)
Zahra Soltani, Arizona State University (Tempe, AZ)
Shanshan Ma, Arizona State University (Las Vegas, NV)
Empowering Electricity Markets through Distributed Energy Resources and
Smart Building Setpoint Optimization: A Graph Neural Network-Based Deep
Reinforcement Learning Approach
You Lin, Massachusetts Institute of Technology (Cambridge, MA)
Audun Botterud, Massachusetts Institute of Technology (Cambridge,
MA)
Daisy Green, Massachusetts Institute of Technology (Cambridge, MA)
Leslie Norford, Massachusetts Institute of Technology (Cambridge,
MA)
Jeremy Gregory, Massachusetts Institute of Technology (Cambridge,
MA)
Multi-timescale Operations of Nuclear-Renewable Hybrid Energy Systems
for Reserve and Thermal Products Provision
Jie Zhang, University of Texas at Dallas (Richardson, TX)
Jubeyer Rahman, University of Texas at Dallas (Richardson, TX)
11:30 a.m. Lunch
12:30 p.m. Session H2 (Commission Meeting Room)
Optimizing Stand-Alone Battery Storage Operations Scheduling Under
Uncertainties in German Residential Electricity Market Using Stochastic
Dual Dynamic Programming
Pattanun Chanpiwat, University of Maryland & Aalto University
(College Park, MD; Espoo, Finland)
Fabricio Oliveira, Aalto University (Espoo, Finland)
Steven A. Gabriel, University of Maryland (College Park, MD)
Integration of Hybrid Storage Resources into Wholesale Electricity
Markets
Nikita Singhal, Electric Power Research Institute (Palo Alto, CA)
Rajni Kant Bansal, Johns Hopkins University (Baltimore, MD)
Erik Ela, Electric Power Research Institute (Palo Alto, CA)
Julie Mulvaney Kemp, Lawrence Berkeley National Laboratory
(Berkeley, CA)
Miguel Heleno, Lawrence Berkeley National Laboratory (Berkeley, CA)
Predicting Strategic Energy Storage Behaviors
Yuexin Bian, University of California (San Diego, CA)
Ningkun Zheng, Columbia University (New York City, NY)
Yang Zheng, University of California--San Diego (San Diego, CA)
Bolun Xu, Columbia University (New York, NY)
Yuanyuan Shi, University of California--San Diego (San Diego, CA)
Energy Storage Participation Algorithm Competition (ESPA-Comp)
Brent Eldridge, Pacific Northwest National Laboratory (Bel Air, MD)
Jesse Holzer, Pacific Northwest National Laboratory (r)
Abhishek Somani, Pacific Northwest National Laboratory (Richland,
WA)
Kostas Oikonomou, Pacific Northwest National Laboratory (Richland,
WA)
Brittany Tarufelli, Pacific Northwest National Laboratory (Laramie,
WY)
Li He, Pacific Northwest National Laboratory (Richland, WA)
2:30 p.m. Break
3:00 p.m. Session H3 (Commission Meeting Room)
Congestion Mitigation with Transmission Reconfigurations in the Evergy
Footprint
Pablo A. Ruiz, NewGrid (Somerville, MA)
Derek Brown, Evergy (Topeka, KS)
Jeremy Harris, Evergy (Topeka, KS)
German Lorenzon, NewGrid (Somerville, MA)
Grant Wilkerson, Evergy (Kansas City, MO)
Optimal Transmission Expansion Planning with Grid Enhancing
Technologies
Swaroop Srinivasrao Guggilam, Electric Power Research Institute
(Knoxville, TN)
Alberto Del Rosso, Electric Power Research Institute (Knoxville,
TN)
The Key Role of Extended ACOPF-based Decision Making for Supporting
Clean, Cost-Effective and Reliable/Resilient Electricity Services
Maria Ilic, Carnegie Mellon University (Pittsburgh, PA)
Rupamathi Jaddivada, SmartGridz (Boston, MA)
Jeffrey Lang, Massachusetts Institute of Technology (Cambridge, MA)
Eric Allen, SmartGridz (Boston, MA)
Data & API Standards for Clean Energy Solutions and Digital Innovation
Priya Barua, Clean Energy Buyers Institute (Washington, DC)
Ben Gerber, M-RETS (Minneapolis, MN)
Mine Production Scheduling under Time-of-Use Power Rates with Renewable
Energy Sources
Daniel Bienstock, Columbia University (New York, NY)
Amy Mcbrayer, South Dakota School of Mines (Rapid City, SD)
Andrea Brickey, South Dakota School of Mines (Rapid City, SD)
Alexandra Newman, Colorado School of Mines (Golden, CO)
5:30 p.m. Adjourn
Conference Abstracts
Day 1--Tuesday, June 27
Session T1 (Tuesday, June 27, 9:30 a.m.) Commission Meeting Room
Probabilistic Energy Adequacy Assessment Under Extreme Weather Events
Dr. Jinye Zhao, Technical Manager, ISO New England (Holyoke, MA)
Stephen George, Director, ISO New England (Holyoke, MA)
Dr. Ke Ma, Senior Analyst, ISO New England (Holyoke, MA)
Steven Judd, Manager, ISO New England (Holyoke, MA)
Dr. Eamonn Lannoye, Program Manager, Electric Power Research Institute
(Dublin, Ireland)
Juan Carlos Martin, Senior Engineer, Electric Power Research Institute
(Madrid, Spain)
As intermittent and limited energy resources become a larger
portion of the region's generation resource mix, and as the region's
demand becomes increasingly electrified, it has become increasingly
important to understand the operational risks associated with future
weather extremes. To better inform the region's understanding of these
risks, ISO New England in collaboration with EPRI, has developed a
probabilistic energy adequacy assessment framework. This approach of
stress testing the system's energy adequacy focuses on generating
comprehensive extreme weather scenarios for the New England region and
performing risk analyses across these scenarios. The framework offers a
tailored approach to identify unique energy adequacy risks faced by the
New England power system and enables us to analyze related stressors
under extreme events.
Transmission Outage Probability Estimation Based on Real-Time Weather
Forecast
Dr. Mingguo Hong, Principal Analyst, ISO New England (Holyoke, MA)
Dr. Xiaochuan Luo, Manager, ISO New England (Holyoke, MA)
[[Page 40239]]
Dr. Slava Maslennikov, Technical Manager, ISO New England (Holyoke, MA)
Dr. Tongxin Zheng, Director, ISO New England (Holyoke, MA)
Extreme weather patterns including both winter and summer storms
have been posing increasing threats to power transmission security in
the New England area. Being able to accurately predict their impacts
will benefit both power system operation and planning. In recent years,
the ISO New England has been developing machine-learning algorithms for
estimating the probability of transmission line outage in real-time,
given weather forecast variables such as wind, temperature, snow, and
rain precipitation, etc. This presentation will share our study
findings and on-going software implementation experience.
Overview of MISO and PJM Hybrid Multiple Configuration Resource Model
Implementation Within PROBE Software
Dr. Anthony Giacomoni, Manager, Advanced Analytics, PJM Interconnection
(Audubon, PA)
Dr. Danial Nazemi, Operations Research Engineer II, PJM Interconnection
(Audubon, PA)
Dr. Qun Gu, Principal Consultant, PowerGEM (Clifton Park, NY)
Dr. Boris Gisin, President, PowerGEM (Clifton Park, NY)
For the past three years, PJM, MISO and PowerGEM have been working
jointly on developing an advanced SCUC algorithm to prepare for the
full-scale implementation of a Multiple Configuration Resource (MCR)
model in their energy markets. PJM currently uses aggregate models for
MCRs that do not accurately capture their true operating
characteristics. Often MCRs may need to overestimate costs to ensure
cost recovery, underestimate costs to ensure selection or offer reduced
operating ranges to be able to accurately reflect their operating
capabilities. This presentation will focus on the impacts to PJM's
energy markets from optimizing the multiple configurations and
components of their combined cycle units. The optimization of multiple
configurations and components is very challenging due to the additional
integer variables and constraints that impact the solution time and may
lead to performance challenges. A prototype full-scale MCR model has
been implemented in the PROBE Day-Ahead software, which is currently a
critical component of PJM's Day-Ahead Market (DAM) clearing process.
The prototype MCR model has the ability to perform energy and ancillary
service co-optimization for combined cycle units with multiple
configurations and components. The developed model has no practical
limits on the number of configurations that each unit can have and the
model allows for simultaneously enforcing configuration and component
level constraints. Benefits of the new model include enhanced modeling
flexibility and accuracy, which allows combined cycle participants to
submit bids that align with their units' physical operating
constraints, better alignment with the real-time model and market
outcomes with increased social benefits. To quantify the impacts of the
MCR model on PJM's energy markets, PJM gathered configuration and
component data from a large number of combined cycle units in its
footprint. Simulations using one year of historical DAM data were then
performed to measure the impacts of the MCR model on the clearing
engine's computational performance and market outcomes. Results clearly
demonstrate significant potential bid production cost savings of over
$100 million per year with a very modest increase in solution time. The
MCR model is currently being implemented in PJM's DAM for the
optimization of synchronous condensers. It is planned that after
successful implementation of the MCR model for synchronous condensers
the same model will be implemented for combined cycle units and
possibly for hybrid resources as well.
Session T2 (Tuesday, June 27, 12:30 p.m.) (Commission Meeting Room)
Enhancements to Ramp Rate Dependent Spinning Reserve Modeling
Dr. Shubo Zhang, Energy Market Engineer, New York ISO (Rensselaer, NY)
John L. Meyer, Senior Energy Market Engineer, New York ISO (Rensselaer,
NY)
Iiro Harjunkoski, Researcher, Hitachi Energy (Mannheim, Germany)
In a joint effort between the NYISO and Hitachi Energy, a Ramp Rate
Dependent (RRD) formulation of spinning reserve scheduling that
utilizes Multiple Response Rates (MRR) across a Combined Cycle Gas
Turbine (CCGT) generator or other dispatchable resource's range of
output has been developed. To provide more flexibility to Market
Participants, a ``Limited Participation'' conceptual strategy is also
included that would allow a CCGT or other dispatchable resource to
selectively provide spinning reserves or regulation for a certain range
of output. This presentation will discuss the market basis and design
of Limited Participation in spinning reserves and regulation, in the
context of Ramp Rate Dependent Spinning Reserve Modeling.
Determining Dynamic Operating Reserve Requirements for Reliability and
Efficient Market Outcomes: Tradeoffs and Price Formation Challenges
Matthew Musto, Technical Specialist--Market Solutions Engineering,
NYISO (Rensselaer, NY)
Kanchan Upadhyay, Senior Energy Market Engineer--Market Solutions
Engineering, NYISO (Rensselaer, NY)
Edward O Lo, Consultant, Hitachi Energy (San Jose, CA)
With increasing intermittent resources in the generation mix, the
need for more economic responsiveness and operational flexibility while
maintaining system reliability is growing. The NYISO and Hitachi Energy
have been working on advanced design and techniques for calculating
operating reserve requirements dynamically for each reserve region
while simultaneously optimizing the dispatch solution in the market
clearing engine. A key benefit of the dynamic reserves formulation is
the functionality to determine the least-cost generation and reserve
mix to meet load. This dynamic determination of reserve requirements in
New York Control Area (NYCA) and all reserve regions within the NYCA
creates new tradeoffs between energy schedules and reserve
requirements. This presentation will discuss these tradeoffs and
highlight the associated price formation challenge.
Operational Experience with Nodal Procurement of Flexible Ramping
Product
Dr. Guillermo Bautista-Alderete, Director, Market Analysis &
Forecasting, California ISO (Folsom, CA)
George Angelidis, Executive Principal--Power Systems and Market
Technology, California ISO (Folsom, CA)
Yu Wan, Power Systems Engineer, California ISO (Folsom, CA)
Kun Zhao, Market Engineering Specialist Lead, California ISO (Folsom,
CA)
The CAISO's market procures flexible ramping capacity to manage
weather-based uncertainty realized in real time. The CAISO introduced
this product in 2016 using a procurement requirement at the system
level. Using a system-level procurement requirement, the market
frequently procured flexible ramping capacity from locations impacted
by
[[Page 40240]]
congestion, thereby stranding the flexible ramping capacity. The CAISO
has enhanced the design of the flexible ramping product using a
formulation that observes transmission constraints. This approach
considers congestion management as part of the procurement of flexible
ramping capacity helping to ensure the CAISO can deploy this capacity
when uncertainty arises. This new design poses additional complexity
because the market clearing process now considers transmission
constraints for energy and for flexible ramping capacity. The CAISO
will provide an update on the performance of its flexible ramping
product under this new design.
Impact of DERs on Load Distribution Factors in Forecasting
Dr. Khaled Abdul-Rahman, Vice President, Power System and Market
Technology, California ISO (Folsom, CA)
Hani Alarian, Executive Director of Power Systems Technology
Operations, California ISO (Folsom, CA)
Trevor Ludlow, Specialist Lead of Power Systems Technology Operations,
California ISO (Folsom, CA)
Chiranjeevi Madvesh, Lead Engineer of Power Systems Technology
Operations, California ISO (Folsom, CA)
The calculation of load distributing factors (LDFs) is
traditionally performed based on a collection of historical state
estimator calculated values and stored in libraries for use when
simulating power system operations in look-ahead market and reliability
applications. The inherit assumption is that bus loads are accurately
estimated from the aggregate system load forecast using LDFs, and
generation quantities are deterministically known. Accordingly, it is
assumed that there is a strong correlation between the system load and
individual bus loads. However, the proliferation of behind-the-meter
distributed energy resources, solar rooftops, batteries, hybrid
resources, as well as the use of behind the-meter demand response
utility programs, and electric vehicles introduces a non-conforming
load component at locations that were previously conforming loads.
This issue requires a more accurate forecast of non-conforming
loads by taking into consideration the probabilistic nature of bus
loads and variable/intermittent generation. The CAISO's enhanced LDF
forecast algorithm takes into account not just the average hour of the
day and the day of the week but includes machine learning ability to
distinguish between flows that scales up with load in both a non-linear
and linear fashion. It also includes a new fusion-forecasting model
that improves forecasting accuracy. Additionally, the CAISO's algorithm
uses data engineering and preprocessing options to increase the
accuracy of the proposed model. The CAISO analyzes load data to verify
that the proposed methodology provides higher forecasting accuracy with
lower error indices.
Increased Congestion in SPP and Optimization in the Day Ahead Market
With Gurobi
Seth Mayfield, Manager of Market Support & Analysis, Southwest Power
Pool (Little Rock, AR)
Yasser Bahbaz, Director of Markets Development, Southwest Power Pool
(Little Rock, AR)
SPP has seen substantial increased congestion in recent years.
These trends have numerous reliability and economic impact. In the Day-
Ahead Market, SPP has noticed high transmission activation leading to
longer optimization runtimes. High activations results in large
increases in the mathematical growth, which then results in slower
Mixed Integer Program (MIP) runtimes. Other factors include increasing
market rules complexity (such as uncertainty product) and additional
market resource registrations. SPP performed a study where we evaluate
swapping our existing optimization engine (IBM's CPlex) with Gurobi's
optimization engine. The study reran every approved DAMKT SCUC
operating day for 2021 (365 cases). Gurobi solved the cases 41% faster
than CPlex using Gurobi without tuning. A very light discussion with
Gurobi resulted in a few tuning suggestions which pushed the runtime
reduction to 43%. SPP is in the process of acquiring Gurobi licenses
and will work with our software vendor to incorporate the engine into
our market. Phase 1 will include simultaneously running both CPlex and
Gurobi as we believe this will give us the best/fastest results for
each day. It is expected that there will be a transition to using more
Gurobi instances than CPlex as time goes on.
Session T3 (Tuesday, June 27, 3:30 p.m.) (Commission Meeting Room)
MISO Operations Risk Assessment and Uncertainty Management
Dr. Congcong Wang, Lead, Operations Risk Assessment, Midcontinent ISO
(Carmel, IN)
Dr Long Zhao, Senior Advisor of Operations Risk Assessment,
Midcontinent ISO (Carmel, IN)
Jason Howard, Director of Operations Risk Management, Midcontinent ISO
(Carmel, IN)
Fleet transition is driving a new risk profile at MISO. Uncertainty
and Variability are increasing in their intensity, diversity, and
volatility. While probabilistic forecasting has made progress for wind
and solar, its integration into operations and markets is uneven.
Furthermore, uncertainty comes in more sources than just renewable
energy such as generation and transmission outages, fuel scarcity
especially during extreme weather events, resulting in challenges for
the RTO to manage the aggregated or net uncertainty. This presentation
will outline MISO's operations risk assessment and uncertainty
management initiatives including: (1) Characterize Risks--transform
traditional deterministic renewable, load and ``net'' load forecasts to
probabilistic forecasts in production systems; and assess generation
and fuel risks to better capture the unknowns; (2) Integrate risks into
Operations Situational Awareness and Operations Planning--provide
control room a dynamic and geographically granular visualization of
operating reserve margin; and visibility of weather driven operations
risks; (3) Automate risk management through market products with
dynamic reserve requirements--assess net uncertainty across different
timeframes; and predict risks to establish a daily target for procuring
market-based reserves using analytical and meteorological techniques.
This work is done in collaboration with R&D through the joint
Uncertainty Roadmap.
Market Simulation Tools and Uncertainty Quantification Methods To
Support Operational Uncertainty Management
Dr. Nazif Faqiry, R&D Engineer, Midcontinent ISO (Carmel, IN)
Dr. Arezou Ghesmati, R&D Engineer, Midcontinent ISO (Carmel, IN)
Dr. Bing Huang, R&D Engineer, Midcontinent ISO (Carmel, IN)
Dr. Yonghong Chen, Consulting Advisor, Midcontinent ISO (Carmel, IN)
Dr. Bernard Knueven, Research Scientist, National Renewable Energy
Laboratory (Golden, CO)
Portfolio evolution and more frequent extreme weather events are
introducing more challenges to MISO Market Operations with new risk
profiles. To improve market efficiency and generate efficient price
signals for operational and investment decisions, it is increasingly
important to align market
[[Page 40241]]
design with reliability and risk management needs. This work presents
the Electrical Grid Research & Engineering (EGRET) market simulation
tool adapted and enhanced at MISO to evaluate existing and future
system, and a novel netload ramp uncertainty prediction and scenario
generation method to support stochastic simulation and reserve
requirement settings. First, it presents a multi-periods market
simulation tool and its capabilities, including rolling real-time unit
commitment and economic dispatch (UCED), followed by the results of 8
GW solar penetration study. Then, it presents a novel method that is
developed to predict and generate scenarios for uncertainties across
different lead times. The scenarios can be used as inputs to the market
simulation tool for stochastic simulation. The two parts together may
lead to multi-scenario stochastic unit commitment in the future. In the
near term, the stochastic market simulation can help to validate market
design and operational procedures. The uncertainty predication and
scenario generation may help operational situational awareness and
better define reserve requirements and operational margins.
Pumped Storage Optimization in Real-Time Markets Under Uncertainty
Bing Huang, Research Engineer, Midcontinent ISO (Carmel, IN)
Arezou Ghesmati, R&D Scientist, Midcontinent ISO (Carmel, IN)
Yonghong Chen, Consulting Advisor, Midcontinent ISO (Carmel, IN)
Ross Baldick, Emeritus Professor, University of Texas at Austin
(Austin, TX)
Pumped storage hydro units (PSHU) can provide flexibility to power
systems and may especially be valuable with increasing shares of
intermittent renewable resources. However, the scheduling of PSHUs,
particularly in the real-time market, has not been thoroughly studied.
To enhance the use of PSH resources and leverage their flexibility, it
is important to incorporate the uncertainties to properly address the
risks in the real-time market operation. In this work, first a
deterministic PSHU model that incorporates the state of charge in the
Day-ahead market optimization is introduced. Second, two pumped storage
hydro (PSH) models that use probabilistic price forecasts are proposed
for Look-ahead commitment (LAC) in the real-time market operation. A
risk neutral stochastic PSH model and a risk averse robust optimization
PSH model are developed using the probabilistic price forecasts to
capture the real-time market uncertainties. Numerical studies in Mid-
continent Independent System Operator (MISO) system demonstrate that
the proposed models improve market efficiency and reduce PSH real time
risk compared to the current approach. Probabilistic forecast for Real
Time Locational Marginal Price (RT-LMP) is created and embedded into
the proposed stochastic and robust optimization models, a statistically
robust approach is used to generate scenarios for reflecting the
temporal inter-dependence of the LMP forecast uncertainties.
Forecasting Aggregate Electricity Demand on a 5-Minute Basis Using
Machine Learning
Dr. Yinghua Wu, Senior Lead Data Scientist, PJM Interconnection
(Audubon, PA)
Laura Walter, Senior Lead Data Scientist, PJM Interconnection (Audubon,
PA)
Dr. Anthony Giacomoni, Manager--Advanced Analytics, PJM Interconnection
(Audubon, PA)
PJM currently has two load forecasts used in dispatch and real-time
operations. These forecasts are comprised of the short-term forecast,
which is the forecasted hourly average load for the next seven days,
and the very short-term load forecast, which is the forecasted 5-minute
load averages for the next six hours. The very short-term load forecast
is constantly fed into the real-time dispatch software for optimal
power flow calculations and real-time market pricing. It is of crucial
importance that these forecasts closely match the actual load in the
near future to maintain system frequency and voltage. If not,
dispatchers must take action to quickly intervene and adjust the load
up or down. The load profiles generally follow temporal patterns, but
are also driven by weather and other usage patterns. Given the recent
rapid growth of machine learning technologies, this presentation will
survey a collection of some of the most representative and innovative
methods that are suitable to time series predictions such as load
forecasting, e.g., gradient boosting, recurrent neural network, causal
convolution, etc. We will also revisit some traditional methods such as
generalized linear models and automatic regressive moving average
(ARMA) methods to explore whether they can capture the load shape in
short horizons. We will survey and analyze these new technologies for
their power of prediction to see if these methods provide the potential
to improve on current forecasting practices.
Long-Term Outlook for the ERCOT Grid
Pengwei Du, Supervisor--Economic Analysis & Long Term Planning Studies,
The Electric Reliability Council of Texas (Austin, Texas)
The bulk transmission network within ERCOT consists of the 60-
kilovolt (kV) and higher transmission lines and associated equipment.
ERCOT conducts a forward-looking study to understand long-term
reliability and economics need to ensure continued system reliability
and efficiency. This talk will present the key challenges and findings
from the most recent long-term system assessment planning study, which
accounts for the inherent uncertainty of planning the system in the 10-
to 15-year planning horizon.
Day 2--Wednesday, June 28
Session W-A1 (Wednesday, June 28, 9:00 a.m.) (Commission Meeting Room)
Uncertainty-Informed Renewable Energy Scheduling: A Scalable Bilevel
Framework
Dr. Dongwei Zhao, Postdoctoral Associate, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Vladimir Dvorkin, Postdoctoral Fellow, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Stefanos Delikaraoglou, Data Scientist, Axpo Solutions AG (Zurich,
Switzerland)
Dr. Alberto J. Lamadrid L., Associate Professor, Lehigh University
(Bethlehem, PA)
Dr. Audun Botterud, Principal Research Scientist, Massachusetts
Institute of Technology (Cambridge, MA)
The fast-growing variable renewable energy sources (VRES) in
electricity markets are creating challenges to uncertainty management.
This work addresses these challenges by adopting an uncertainty-
informed adjustment toward VRES bidding quantities in the day-ahead
market and minimizing expected system costs under the sequential
market-clearing structure. However, implementing this mechanism
requires solving a bilevel optimization problem, which is
computationally difficult for practical large-scale systems. To
overcome this challenge, we propose a novel technique based on strong
duality and McCormick envelopes. This approach relaxes the original
problem to a linear program, enabling efficient computation for large-
scale systems. We conduct case studies on the 1576-bus NYISO systems
and compare our bilevel VRES-adjustment model with the myopic strategy
where VRES producers bid the forecast value in the day-ahead market.
The results
[[Page 40242]]
demonstrate that under a future high VRES penetration level (e.g.,
40%), our bilevel framework can significantly reduce the expected
system cost and the volatility of the market prices, participants'
revenues, and real-time re-dispatch adjustments, by efficiently
optimizing VRES quantities in the day-ahead market. Furthermore, we
found that increasing transmission ability may incur a much higher
system cost under the myopic strategy while a lower cost under the
bilevel model) because of the lack of flexible generators or reserves
in real time to deal with uncertainty.
Enhancing Power System Resilience and Efficiency Through Proactive
Security Assessments and the Use of powerSAS.m: A Robust, Efficient,
and Scalable Security Analysis Tool for Large-Scale Systems
Dr. Yang Liu, Postdoctoral Appointee, Argonne National Laboratory
(Lemont, IL)
Dr. Feng Qiu, Principal Computational Scientist, Argonne National
Laboratory (Lemont, IL)
Dr. Jianzhe Liu, Energy Systems Scientist, Argonne National Laboratory
(Lemont, IL)
Power system security assessment is directly related to increasing
real-time and day-ahead market and planning efficiency because it helps
ensure the reliable and secure operation of the power system, which is
essential for efficient market and planning activities. Without proper
security assessments, the power system is vulnerable to a variety of
threats, including cyber attacks, natural disasters, and equipment
failures, which can disrupt the operation of the system and lead to
market inefficiencies and planning uncertainties. By performing
security assessments and identifying potential vulnerabilities, system
operators can take proactive measures to mitigate risks and improve the
reliability and efficiency of the power system, which, in turn,
supports the goals of real-time and day-ahead market and planning
efficiency. Additionally, advanced software tools and models can be
used to support security assessments, enabling operators to better
anticipate and respond to potential security threats and further
improve the efficiency and reliability of the power system. Existing
tools (commercial or open-source) work fine for routine security
analysis under normal operating conditions. However, in resilience
analysis, which studies the system security and reliability under
stressed scenarios, existing tools often experience various numerical
issues, significantly impacting operators' assessment of system
resilience. A recent example is the non-convergence issues with PSS/E,
one of the best commercial power system analysis tools used in the DOE
Puerto Rico resilience project led by Argonne. The numerical issues
forced the team to give up more advanced analysis. A robust and
efficient security analysis tool is imperative for resilience study in
large-scale systems. In this talk, we will introduce a recently
released open-source power system security analysis tool called
powerSAS.m. The powerSAS.m is a robust, efficient, and scalable power
grid analysis framework based on semi-analytical solutions (SAS)
technology. The talk will cover the following two critical aspects and
discuss how they are directly related to increasing real-time and day-
ahead market and planning efficiency. First, we will introduce the
fundamentals of the SAS technology and the major functionalities of the
powerSAS.m, including (1) Steady-state analysis, including power flow,
continuation power flow, and contingency analysis. (2) Dynamic security
analysis, including voltage stability analysis, transient stability
analysis, and flexible user-defined simulation. (3) Hybrid extended-
term simulation provides adaptive quasi-steady-state-dynamic hybrid
simulation in extended term with high accuracy and efficiency. We will
also introduce some ongoing functionalities, including the SAS-based
electromagnetic transient (EMT) simulation and multi-scale simulations.
Second, we will present some use cases to demonstrate the key features
and performance of the SAS technology and powerSAS.m tool, including:
(1) High numerical robustness. Backed by the SAS approach, the PowerSAS
tool provides much better convergence than the tools using traditional
Newton-type algebraic equation solvers when solving algebraic
equations/ordinary differential equations/differential-algebraic
equations. (2) Enhanced computational efficiency and scalability. Due
to the analytical nature, PowerSAS provides model-adaptive high-
accuracy approximation, which brings significantly extended effective
range and much larger steps for steady-state/dynamic analysis. PowerSAS
has been used to solve large-scale system cases with 200,000+ buses.
Stochastic Unit Commitment and Market Clearing in Julia With
UnitCommitment.jl
Dr. Alinson Santos Xavier, Computational Scientist, Argonne National
Laboratory (Lemont, IL)
Og[uuml]n Yurdakul, Ph.D. Candidate, Technische Universit[auml]t Berlin
(Berlin, Germany)
Dr. Aleksandr M. Kazachkov, Assistant Professor, University of Florida
(Gainesville, FL)
Jun He, Professor, Purdue University (West Lafayette, IN)
Dr. Feng Qiu, Principal Computational Scientist, Argonne National
Laboratory (Lemont, IL)
UnitCommitment.jl (UC.jl) is a comprehensive open-source
optimization package for the Security-Constrained Unit Commitment
Problem (SCUC), providing an extensible and fully-documented data
format for the problem, Julia/JuMP implementations of state-of-the-art
mathematical formulations and solution methods, as well as a diverse
collection of realistic and large-scale benchmark instances. This talk
focuses on two major features recently introduced to the package.
Firstly, the package now supports modeling and optimizing two-stage
stochastic versions of the problem, in addition to the deterministic
SCUC. Compared to existing implementations, UC.jl allows a broader set
of network parameters to be treated as uncertain, including not only
demands and generation limits, but also production costs, network
topology, transmission limits, among others. Benchmark scripts are
provided to accurately evaluate the performance of different stochastic
solution methods. Secondly, the package now includes various
functionalities for market clearing, such as the computation of
generator payments and locational marginal prices (LMPs) using
different methods proposed in the literature. In this talk, we will
discuss the usage of these new features, technical challenges
associated with them, and the potential simulations or studies that
they enable.
Reduced-Order Decomposition and Coordination Approach for Markov-Based
Stochastic UC With High Penetration Level of Wind and BESS
Niranjan Raghunathan, Ph.D. Student, University of Connecticut (Storrs,
CT)
Dr. Peter B. Luh, Professor, University of Connecticut and National
Taiwan University (Alexandria, VA)
Dr. Zongjie Wang, Professor, University of Connecticut (Storrs, CT)
Dr. Mikhail A. Bragin, Professor, University of California, Riverside
(Riverside, CA)
Dr. Bing Yan, Professor, Rochester Institute of Technology (Rochester,
NY)
Dr. Meng Yue, Research Staff Electrical Engineer, Brookhaven National
Laboratories (Upton, NY)
[[Page 40243]]
Dr. Tianqiao Zhao, Renewable Energy Group, Brookhaven National
Laboratories (Upton, NY)
With the growing need to achieve carbon neutrality, integrating
renewable energy (e.g., wind and solar) and battery energy storage
systems (BESSs) into the grid is an urgent and challenging enterprise.
At the day-ahead stage, unit commitment (UC) decisions need to account
for uncertainties of geographically distributed renewable generation.
BESS integration can help mitigate intermittence and reduce curtailment
by storing energy during high renewable generation periods and
releasing energy when needed, thus improving the cost efficiency of
grid operation. Therefore, ensuring economic and reliable grid
operations with the significant rise in renewable energy penetration
necessitates the consideration of spatially distributed uncertainties
and BESS in UC. To achieve this, a risk-neutral approach (i.e.,
scenario-based stochastic UC and Markov-based stochastic UC) is
preferred over risk-averse approaches (e.g., robust optimization and
interval optimization), as the latter yields overly conservative
solutions. Between the risk-neutral approaches, Markov-based approaches
have two advantages over scenario-based approaches: (1) Due to the
Markov property, where stochastic information at the next time step
depends only on the information at the current time step, the
uncertainty can be compactly modeled by wind generation states at each
time step and state transitions between subsequent time steps.
Consequently, the overall number of possible states and transitions in
the Markov model increases linearly with the number of intervals in the
optimization horizon, whereas the number of possible scenarios
increases exponentially. (2) Reduced Markov models preserve the
volatility of wind generation, the underlying spatio-temporal
correlation structure, and low-probability, high-impact events more
effectively in uncertainty sets compared to scenarios. Therefore, the
problem is formulated as Markov-based stochastic UC. With distributed
wind, however, the number of possible wind states grows exponentially
with the number of wind farms in different locations considered, posing
major computational difficulties. To reduce complexity, an innovative
decomposition and coordination framework is developed, where
approximate area subproblems are formulated by utilizing area-
perspective, reduced-order Markov models. In these models, the
variability of local (in-area) windfarms is emphasized while that of
nonlocal (out-of-area) windfarms is approximated by using Principal
Component Analysis (PCA) to reduce dimensionality while preserving the
maximum amount of variation. This is a reasonable approximation because
variations at the local level have more impact on the behavior of local
units and power flow through local transmission lines compared to
variations at distant locations. The objective of an approximate area
subproblem is to optimize in-area resources based on its area-
perspective Markov model. The approximate area subproblems are solved
iteratively while their solutions are coordinated using Surrogate
Absolute-Value Lagrangian Relaxation (SAVLR), a state-of-the-art dual
method with faster convergence than traditional Lagrangian Relaxation
(LR)-based methods. To improve performance, an online filtering method
for removing redundant transmission capacity constraints at each
iteration is implemented in parallel by utilizing multiple cores. The
solutions are validated using Monte Carlo simulations. Testing results
based on the 118-bus system with 5 distributed wind farms show the
effectiveness of the method in finding low-cost and robust UC solutions
in a timely manner for multiple cases with different volatilities of
wind generation and simulated extreme weather events. Analysis of the
operation of BESSs shows that they absorb excess energy during high
wind periods and release the energy during low wind periods, thus
reducing wind curtailment and overall costs.
Learn To Branch and Dive for Large-Scale Unit Commitment Problem
Jingtao Qin, Research Assistant, University of California, Riverside
(Riverside, CA)
Nanpeng Yu, Associate Professor, University of California, Riverside
(Riverside, CA)
Mikhail Bragin, Assistant Research Professor, University of Connecticut
(Storrs, CT)
Unit commitment (UC) problems are typically formulated as mixed-
integer program (MIP) and solved by the branch-and-bound (B\&B)
paradigm. The recent advances in graph neural network (GNN) motivate
the application of GNN in learning to dive and branch for B\&B
algorithm in modern MIP solvers. Existing GNN models are mostly
constructed from B\&B trees, which are computationally expensive when
dealing with large-scale UC problems. In this paper, we propose a
physical network information-based hierarchical graph convolution model
for neural diving that leverages the underlying features of various
components of power systems to find high-quality variable assignments.
Furthermore, we adopt the B\&B tree-based graph convolution model for
neural branching to select the optimal variables for branching at each
node of the B\&B tree. Finally, we integrate neural diving and neural
branching into a modern MIP solver to establish a novel neural MIP
solver that is specially designed for large-scale UC problems. Numeral
studies show that our proposed model has better performance and
scalability than the baseline B\&B tree-based model on neural diving.
Moreover, the neural MIP solver yields the lowest MIPGap for all
testing days after combining it with our proposed neural diving model
and baseline neural branching model.
Session W-B1 (Wednesday, June 28, 9:00 a.m.) (Hearing Room One)
Stochastic Nodal Adequacy Pricing Platform (SNAP)
Dr Richard D. Tabors, Partner and President, Tabors Caramanis Rudkevich
(Newton, MA)
Dr. Aleksandr Rudkevich, President, Newton Energy Group (Newton, MA)
Russel Philbrick, President, Polaris Systems Optimization (Seattle, WA)
Dr. Selin Yanikara, Analyst, Newton Energy Group (Newton, MA)
The Stochastic Nodal Adequacy Pricing Platform (SNAP) software
system provides an implemented methodology to calculate the probability
and value of RESOURCE INADEQUACY of electricity supply on an hourly
basis for a period of one to five days ahead of real time. The
stochasticity of SNAP is driven by the stochastic weather forecasts
available and provided by IBM The Weather Company on a i5 day forward
basis for a 4x4km grid worldwide (SNAP uses at most 5). Forecasts are
developed from 76 different numerical weather prediction models (and
their ensemble members) as inputs to their forecast system. Bayesian
model averaging is used to correct for systematic errors (bias).
Results are rearranged to create 100 synthetic weather system scenarios
through the use of Ensemble Copula Quantile-Coupling technique. The
result is a probabilistic forecast within which each of the scenarios
is equally likely. As the electric supply system moves toward greater
dependence on renewable sources both in front of and behind the meter
and as weather conditions are evolving, the stochastics of weather have
become a, if not the
[[Page 40244]]
driving force in forecasting power system adequacy. SNAP is developed
as an information/assist tool for operational planning at the utility
system level. SNAP has been developed with funding from the Department
of Energy's ARPA-E PERFORM program. SNAP uses the individual components
of the weather forecast scenarios to create 100 probabilistic scenarios
of the output of individual wind and solar locations as well
forecasting of demand incorporating behind the meter generation. Based
on the probability of renewable supply, demand, and the probability of
outage of traditional supply sources and transmission, SNAP runs
100,000 Monte Carlo SCED/SCUC runs of the commercially available cloud-
based ENELYTIX software system to identify the existence of resource
inadequacy, the nodal location of that inadequacy, its cause and
potential solutions. The objective is to present the structure of the
computational and analytic processes that allow for running and
evaluation of 100,000 scenarios for each individual forecast hour. The
presentation will discuss the cloud-based structure the allows the
analysis to be completed in under 50 minutes using 500 virtual machines
at a costs of $120 at spot rates.
Assessing Nodal Adequacy of Large Power Systems
Dr. F. Selin Yanikara, Energy Analyst, Newton Energy Group (Newton, MA)
Russ Philbrick, President, Polaris Systems Optimization (Seattle, WA)
Aleksandr M. Rudkevich, President, Newton Energy Group (Newton, MA)
Sophie Edelman, Electricity Research Analyst, The Brattle Group (New
York, New York)
Extreme weather events, increasing electrification, and integration
of wind and solar power pose significant challenges for reliable
operation of the power grid. Quantitative evaluation of these impacts
is critical for making efficient policy and investment decisions and in
designing markets and engineering controls. This presentation will
summarize the theoretical foundation for nodal probabilistic assessment
of resource adequacy and its applications to modern electrical systems
with a significant penetration of weather dependent variable energy
resources and storage technologies. In addition, this presentation will
address the need for, and will present, new adequacy metrics that
reflect an economically justified contribution of each system asset--
generation, transmission, or demand resource to system adequacy. The
analysis relies on the Monte Carlo based methodology using new
computationally efficient and statistically accurate methods. We
illustrate the numerical results and computational performance of our
approach using the ENELYTIX[supreg] powered by PSO SaaS and our
standard dataset for the ERCOT market.
Comparison of Flexibility Reserve and ORDC for Increasing System
Flexibility
Phillip de Mello, Senior Technical Leader, Electric Power Research
Institute (Palo Alto, CA)
Erik Ela, Program Manager, Electric Power Research Institute (Boulder,
CO)
Nikita Singhal, Technical Leader, Electric Power Research Institute
(Palo Alto, CA)
Alexandre Moreira da Silva, Research Scientist, Lawrence Berkeley
National Laboratory (Berkeley, CA)
Miguel Heleno, Research Scientist/Engineer, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Power system composition changes are making flexible resources more
important to balance the increasing variability and uncertainty. System
operators often look to increase the amount of flexibility available to
give real time operations greater control. Two common methods for
increasing flexibility are to create new reserve products that are
targeted towards flexibility and ramping capability or using an
extended operating reserve demand curve (ORDC) to procure more of an
existing reserve when the additional value exceeds costs. Detailed
operation simulations to mimic day ahead and real time markets were
conducted to compare flexibility reserves and ORDCs. Benefits to
reliability were measured by a reduction in shortages of reserves and
energy experienced across the system. The extra reserves generally
increased the costs of running the system, but it was lower than the
penalty prices of the shortages relieved. Some periods showed a
reduction of system costs with added reserves, suggesting that more
efficient designs of reserves could not only increase system
reliability but also reduce costs. Both methods increase the
flexibility on the system, but function differently in typical
deployments in current ISO/RTO practice. The different parameters
defining each technique was explored to understand how their
differences manifest in improving reliability. Most differences reflect
the tradeoff between flexibility in designing a new product versus ease
of implementation of procuring more of an existing product. The key
difference of the techniques results due to the sharing of generator
ramp rates between different reserve products. Most existing
implementations require dedicated capacity for each reserve product but
often do not require dedicated ramp capability. Using a new flexibility
reserve that can share ramp rates will typically be able to schedule
more reserve for a certain available generator capacity than applying
an ORDC to an existing product. This impacts the cost and effectiveness
of those reserves particularly in periods of system stress. Toggling
the ramp sharing constraint can be used to make either implementation
perform similarly as the other.
ABSCORES, A Novel Application of Banking Scoring and Rating for
Electricity Systems
Alberto J. Lamadrid L., Associate Professor, Lehigh University
(Bethlehem, PA)
Audun Botterud, Principal Research Scientist, Massachusetts Institute
of Technology (Cambridge, MA)
Jhi-Young Joo, Research Scientist, Lawrence Livermore National
Laboratory (Livermore, CA)
Shijia Zhao, Energy Systems Scientist, Argonne National Laboratory
(Lemont, IL)
This presentation discusses the basis for the establishment of an
Electric Assets Risk Bureau. We are developing different scores
customized according to the application required. We study the use of
financial models to determine the risk associated to individual assets
in the system. We present a model focused on managing operational risk,
and outline the methodology for risk metrics applied to high impact,
low probability (HILP) events. We distinguish between, first, public
risk, related to the physical provision of supporting services required
for the stability of the electricity system (i.e., ancillary services);
and second, financial risk, derived from positions taken by
participants with pecuniary repercussions. A key paradigm of our
framework is a focus on implementability of the approach (under
existing regulatory structures) and a method for dispute resolution
given potential decisions taken with the metrics proposed.
Recent Developments in the Day-Ahead and Real-Time Electricity Market
Design and Software Caused by the Higher Energy Costs and Emerging
Technologies--European Experience
Petr Svoboda, Engineer, Unicorn Systems a.s. (Prague, Czech Republic)
Europe has been dealing with the imbalance of production and
[[Page 40245]]
consumption for years. This has led to the development of the single
de-regulated electricity market to solve the barriers between the
individual states and provide the most cost-effective way to ensure
secure, sustainable, and affordable energy supply to the customers.
Recent changes in the market caused by the increase of the energy costs
and emergence of the new technologies have caused the fundamental
shifts in the market design and software enabling its operations. In
our presentation we would like to discuss the latest developments in
the areas of: 1. New algorithms of transmission capacity calculation
that have proven to increase the efficiency of capacity usage and
relevant economic welfare. 2. Development of the HVDC interconnectors
and their impact on the market efficiency and transmission costs. 3.
15-minute day-ahead markets. 4. Emergence of the integrated real-time
markets, new reserve products and multi-interval market clearing. 5.
Introduction of the flexibility instruments to the energy markets. 6.
Successful implementation of the hourly renewable certificates as the
next step towards clean energy transition.
Session W-A2 (Wednesday, June 28, 12:30 p.m.) (Commission Meeting Room)
System Resilience Through Electricity System Restoration and Related
Services
Douglas Wilson, Principal Analytics Engineer, GE (Edinburgh, United
Kingdom)
James Yu, Head of Future Networks, ScottishPower Energy Networks
(Glasgow, United Kingdom)
Ian Macpherson, Senior Innovation Manager, ScottishPower Energy
Networks (Glasgow, United Kingdom)
Marta Laterza, Power Systems Engineer, General Electric (Glasgow,
United Kingdom)
Marcos Santos, Senior Power Systems Engineer, General Electric
(Glasgow, United Kingdom)
Richard Davey, Senior Project Manager, General Electric (Glasgow,
United Kingdom)
Electricity system restoration following a partial or system-wide
outage is an essential service in the power system. There is a need to
apply new resources based on renewable resources to replace the
services that up to now have depended on fossil fuel generation. This
presentation describes a project led by SP Energy Networks in
collaboration with GE to demonstrate a co-ordinated restoration
approach in the distribution grid using a novel control approach
applied to a controlled zone with multiple resources. Live trials of
the approach in the SP Energy Networks power system are presented, as
well as results of testing the approach extensively in a hardware-in-
the-loop environment. The emerging weaknesses of the traditional
methodology were recognised in UK electricity regulation, which was
recently changed to include a requirement for 60% of customer load to
be restored within 24 hours on a regional basis, with all supplies
restored within 5 days (Electricity System Restoration Standard, 2021).
Previous restoration requirements were less onerous on the timeframes
and did not define geographic requirements. Since some regions now lack
large transmission-connected blackstart-capable plant for the
traditional top-down restoration approach, there is a need to harness
the capabilities that renewable and distributed generation and storage
can offer to address the deficit of system restoration capability. The
new service being developed and trialled involves starting distributed
generation and growing an island with customer load within the
distribution network. This island can be sustained by automated control
through managed load pickup as well unplanned disturbances with
existing distributed energy resources, battery storage and demand
response providing the control capability to keep the island in
balance. The blackstart zone may then be reconnected to the
transmission network if this is energised and can then contribute to
managing the power balance as the restoration of the wider system
continues. If appropriate, neighbouring islands can be connected
together, and the resulting larger island is capable of greater block
load pickup of active and reactive loads. One of the distinctive
benefits of the approach taken is that it uses diverse resources of
existing generation, storage and demand response capability that is
present and operational in the network for other day-to-day purposes.
These resources can be harnessed to provide the new electricity system
restoration services with few additional power assets. Inherently, some
devices can provide faster response than others, and large
instantaneous power, and some may be able to sustain an energy supply
while others have limited energy resource. Voltage support and short
circuit current are also considerations. A diversity of renewable
resources is useful to mitigate against individual resources being
unavailable e.g. low wind or low solar conditions. A key requirement
for the co-ordination of an electricity system restoration zone is a
wide area monitoring and control system that manages the power
balancing and switching of the network to automate the process of
growing and sustaining the power island. The approach being trialled
includes a SCADA/distribution management system with the topology
information for network switching, together with a synchrophasor based
wide area control system that manages the balancing, frequency control
and resynchronization alignment of the network. Since the island is
small in comparison to the normal interconnection, a rapid response to
disturbances is required to maintain a stable frequency. Once a
distribution zone is instrumented with the measurement, communication
and control equipment to deliver the service, it is possible to use the
same infrastructure to offer further services to manage grid stability
in the more common circumstance of disturbances during grid-connected
operation.
Coordinated Cross-Border Capacity Calculation Through The FARAO Open-
Source Toolbox
Violette Berge, Vice President, Artelys Canada (Montr[eacute]al,
Canada)
Dr. Nicolas Omont, Vice President of Operations, Artelys (Paris,
France)
Cross-borders exchanges have taken a major role in European
strategy to achieve climate goals. The European Commission set a target
of 15% interconnections in 2030, meaning that each country should have
the physical capability to export at least 15% of their production.
Increasing exchanges makes short term planning more complex. In this
context, the French TSO (RTE) released an open-source toolbox FARAO to
perform Coordinated Capacity Calculation (CCC) and ensure the security
of supply. Artelys is a consultancy expert in power systems
optimization and carries out various projects around TSO operational
coordination in Europe. FARAO performs the optimization of both
preventive and curative remedial actions, including HVDC lines, phase-
shifter transformers and counter-trading but also topological actions.
It is operationally used for the exchanges between Italy and its
northern neighbors as well as between France, Spain and Portugal.
Artelys will present the algorithms of the FARAO toolbox and how they
are actually used to enable greater operational coordination amongst
the countries.
[[Page 40246]]
Advanced Scenario Selection Methods for Probabilistic Transmission
Planning Assessments
Dr. Eknath Vittal, Principal Technical Leader, EPRI (Palo Alto, CA)
Anish Gaikwad, Senior Program Manager, Electric Power Research
Institute (Palo Alto, CA)
Parag Mitra, Senior Technical Leader, Electric Power Research Institute
(Palo Alto, CA)
Given the temporal and spatial characteristics of extreme weather
events, developing transmission planning scenarios, i.e., snapshots of
instantaneous operational conditions, is a challenging problem. It
requires a multi-model assessment that links long-term planning models
that capture the operational performance of the system (resource
adequacy and production cost modeling) to the future meteorological
projections that will inform the impacts of weather and extreme events.
Scenario generation and analysis is computationally and labor
intensive. Identifying snapshot conditions for future system states can
be challenge. This presentation will highlight and detail an EPRI
application that helps transmission planners identify critical power
flow conditions from operational simulations such as production cost
simulations. The EPRI High-Level Screening (HiLS) for Data Analytics
tool allows planners to apply statistical analysis to large dataset
that capture the operational performance of the system. The tool allows
for the data to be organized into clusters of similar operating
conditions reducing the dimensionality of the state space. As an
example, an operational simulation of 8760 hours can be reduced to 10
operating hours that capture 95% of the variability seen over the
course of the year. As uncertainty and variability increase on both the
generation and load, developing methods and processes to understand the
conditions that present the most challenging reliability and stability
conditions will be critical. The HiLS tools, provides transmission
planners a platform that can help them organize and visualize data
representing future operational conditions of the system that considers
both load variability and generator availability.
Incorporating Climate Projections Into Grid Models: Bridging the Data
Gap To Capture Weather Dependent Representative and Extreme Events and
Corresponding Uncertainties
Dr. Zhi Zhou, Principal Computational Scientist, Argonne National
Laboratory (Lemont, IL)
Dr. Neal Mann, Energy Systems Engineer, Argonne National Laboratory
(Lemont, IL)
Yanwen Xu, Graduate Student, University of Illinois at Chicago, Urbana-
Champaign (Champaign, IL)
Zuguang Gao, Graduate Student, University of Chicago (Chicago, IL)
Dr. Akintomide Akinsanola, Assistant Professor, University of Illinois
at Chicago (Chicago, IL)
Dr. Todd Levin, Team Lead, Argonne National Laboratory (Lemont, IL)
Dr. Jonghwan Kwon, Energy Systems Engineer, Argonne National Laboratory
(Lemont, IL)
Dr. Audun Botterud, Senior Energy Systems Engineer, Argonne National
Laboratory (Lemont, IL)
It is crucial to consider high-fidelity weather data and climate
projections in grid models in order to capture future weather trends,
extremes, and uncertainties. However, traditional power system studies
often overlook many of these considerations and rely solely on
historical weather data. To address this challenge, we develop a
computationally manageable framework to process high-quality
representations of climate data for use with power system models. The
framework includes a three-stage architecture to select representative
regions and periods, and also identify periods of extreme weather
conditions after translating climate data (temperature, wind-speed,
etc.) into grid inputs (load, power generation profiles and outage
probabilities). The framework also models and represents uncertainty of
future weather events based on ensembles of climate model simulations.
The outcome of the framework is a set of processed grid inputs in time
series format that capture the impact of climate features on the
system. This includes grid inputs directly converted from weather
variables at the cell level, as well as those from representative
regions and time periods, those representing the impact from extreme
weather events, and their associated uncertainties. We apply this
computational framework to translate downscaled climate projections
generated by three different global climate models, encompassing over
60 different weather variables at 12-km geographic and 3-hour temporal
resolution for all North America. We then demonstrate how consideration
of high-quality climate-driven grid inputs in electricity system models
impacts optimal long-term planning decisions. Capturing future weather
conditions and associated uncertainties is becoming important as power
systems, and their associated markets, are being impacted by both
efforts to decarbonize the effects of a changing climate. These are
also important considerations when updating market designs to maintain
reliability and economic efficiency as the underlying power system
evolves. In addition, capturing weather uncertainty is critical for
risk-aware decision making. Therefore, this work provides a valuable
resource for power system modelers by bridging the gap between climate
models and grid models to help ensure that long-term system planning
decisions are informed by the impacts of future climate conditions.
Session W-B2 (Wednesday, June 28, 12:30 p.m.) (Hearing Room One)
Enhancing Decision Support for Electricity Markets With Machine
Learning
Yury Dvorkin, Faculty, Johns Hopkins University (Baltimore, MD)
Robert Ferrando, Graduate Assistant, University of Arizona (Tucson, AZ)
Laurent Pagnier, Assistant Professor, University of Arizona (Tucson,
AZ)
Zhirui Liang, Ph.D. Student, Johns Hopkins University (Baltimore, MD)
Daniel Bienstock, Professor, Columbia University (New York, NY)
Michael Chertkov, Professor, University of Arizona (Tucson, AZ)
This presentation describes how machine learning can be leveraged
to enhance computational speed of day-ahead and real-time unit
commitment and optimal power flow routines, which are at the core of
market-clearing procedures in US ISOs. Our machine learning
architecture embeds both power flow physics and market design
properties (e.g., cost recovery and revenue adequacy) into the training
stage, which increases accuracy of computations and preserves a
relationship between primal (dispatch) and dual (prices) variables. The
accuracy and scalability of the proposed method is tested on a
realistic 1814-bus NYISO system with current and future renewable
energy penetration levels. We also demonstrate ~100x gain in
computations relative to traditional optimization approaches.
Synergistic Integration of Machine Learning and Mathematical
Optimization for Sub-Hourly Unit Commitment
Jianghua Wu, Ph.D. Candidate, University of Connecticut (Vernon, CT)
Dr. Zongjie Wang, Assistant Professor, University of Connecticut
(Storrs, CT)
Dr. Yonghong Chen, Consulting Advisor, Midcontinent ISO (Carmel, IN)
[[Page 40247]]
Dr. Bing Yan, Assistant Professor, Rochester Institute of Technology
(Rochester, NY)
Dr. Mikhail Bragin, Assistant Project Scientist, University of
California, Riverside (Riverside, CA)
The integration of intermittent renewables into power systems
presents significant challenges for operators due to increased
uncertainties and greater intra-hour net load variability. Sub-hourly
Unit Commitment (UC) has been suggested as a solution to quickly
respond to changes in electricity supply and demand, which is more
complicated than hourly UC because of a higher number of time periods,
and higher dependencies among coupled periods. Traditional optimization
methods could be time-consuming while machine learning (ML) may have
additional feasibility concerns. To address these challenges, a hybrid
approach based on synergistic integration of ML and optimization is
developed. This novel approach adopts our recent decomposition and
coordination Surrogate Absolute-Value Lagrangian Relaxation (SAVLR)
method with efficient coordination and accelerated convergence. ML is
then used to quickly predict SAVLR subproblem solutions. Compared to
those of the original overall problem, subproblem solutions are much
easier to learn. Nevertheless, predicting ``good'' subproblem solutions
is still challenging because of the ``jumps'' of binary decisions and
many types of unit-level constraints. To overcome these issues, a
generic ML model, embedding recurrent neural networks (RNNs) and the
Attention mechanism in the encoder-and-decoder structure, is developed.
Because of the features of RNNs and Attention, this generic model can
learn different subproblem solutions to reduce the training effort, and
can provide time-based predictions to capture dependencies. In
addition, to resolve the limitation of ML in handling constraints, a
rule-based feasibility layer is incorporated in the predicting process,
ensuring feasibility with respect to unit-level constraints. Testing on
the IEEE 118-bus system demonstrates the effectiveness of our approach,
providing feasible and accurate subproblem solutions quickly, and
obtaining near-optimal overall solutions efficiently.
Boosting Power System Operation Economics Via Closed-Loop Predict-and-
Optimize
Dr. Lei Wu, Anson Wood Burchard Chair Professor, Stevens Institute of
Technology (Hoboken, NJ)
Xianbang Chen, Ph.D. Candidate, Stevens Institute of Technology
(Hoboken, NJ)
By and large, power system operations are implemented by
Independent System Operators (ISO) in an open-loop predict-then-
optimize (O-PO) process. First, the uncertainty realizations (e.g.,
renewable energy availability) are predicted as accurately as possible.
Taking the predictions as inputs, day-ahead unit commitment and real-
time economic dispatch problems are then optimally resolved for
determining the operation plan (i.e., optimization). The operation goal
is to achieve the minimum system operation cost, i.e., the optimal
operation economics. However, the operation economics could suffer from
the open-loop process because its predictions may be myopic to the
optimizations, i.e., the predictions seek to improve the immediate
statistical prediction errors (i.e., accuracy-oriented) instead of the
ultimate operation economics. To this end, we propose to improve
operation economics by closing the open loop between the prediction and
the optimization, i.e., a closed-loop predict-and-optimize (C-PO) idea.
Specifically, two C-PO frameworks are designed, including a feature-
driven C-PO framework and a bilevel mixed-integer program (MIP) C-PO
framework. Their core is to feed the induced operation cost back for
training the predictor and measuring the prediction quality with the
operation cost (i.e., cost-oriented). As a result, the prediction and
the optimization can be implemented jointly in a single framework.
Based on real-world data, the feature-driven C-PO is compared to the
traditional O-PO, showing noticeable improvement in operation
economics, although with slightly compromised prediction accuracy for
certain cases. The experiments on a large-size system show that the C-
PO has potential in a real-world application. The bilevel MIP C-PO is
more versatile than the feature-driven C-PO. Based on an IEEE 118-bus
system, the bilevel MIP C-PO is compared to the state-of-the-art
methods of handling uncertainties, i.e., stochastic programming and
robust optimization. The case studies show that the bilevel MIP C-PO is
economically competitive with the state-of-the-art methods but is more
compatible with the current operational practice.
Privacy-Preserving Synthetic Dataset Generation for Power Systems
Research
Dr. Vladimir Dvorkin, Postdoctoral Fellow, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Audun Botterud, Principal Research Scientist, Massachusetts
Institute of Technology (Cambridge, MA)
Power systems research heavily relies on the availability of real-
world power system datasets (network parameters, time series, etc.).
However, data owners, such as system operators, are often hesitant to
share their data due to valid security and privacy concerns. To
overcome these challenges, we have developed state-of-the-art
algorithms that enable the synthetic generation of optimization and
machine learning datasets for the power systems industry. Our
algorithms take real-world datasets as input and output their
synthetic, perturbed versions that maintain the accuracy of the
original data on specific problem classes, such as power system
dispatch and wind power forecasting. Importantly, the original data
remains undisclosed, effectively controlling the privacy risk in data
releases. To ensure privacy preservation, we employ rigorous
perturbation techniques of differential privacy that strictly control
the amount of privacy loss. Furthermore, we preserve the accuracy of
original data through post-processing convex optimization. Our
algorithms have many applications, including synthetic generation of
transmission parameters and renewable generation records. We have open-
sourced our algorithms to encourage their use by interested parties.
For more information, please visit our GitHub repository at https://github.com/wdvorkin/SyntheticData.
Session W-A3 (Wednesday, June 28, 3:30 p.m.) (Commission Meeting Room)
Parallel Interior-Point Solver for Security Constrained ACOPF Problems
on SIMD/GPU Architectures
Dr. Mihai Anitescu, Senior Mathematician, Argonne National Laboratory
(Lemont, IL)
Fran[ccedil]ois Pacaud, Assistant Professor, Ecole des Mines (Paris,
France)
Michel Schanen, Computer Scientist, Argonne National Laboratory
(Lemont, IL)
Sungho Shin, Postdoctoral Scientist, Argonne National Laboratory
(Lemont, IL)
Daniel Adrian Maldonado, Assistant Energy Systems Scientist, Argonne
National Laboratory (Lemont, IL)
We investigate how to port the standard interior-point method for
security constrained ACOPF problems, which are block-structured
nonlinear programs with state equations, on SIMD/GPU architectures.
Computationally, we decompose the interior-point algorithm into two
[[Page 40248]]
successive operations: the evaluation of the derivatives and the
solution of the associated Karush-Kuhn-Tucker (KKT) linear system. Our
method accelerates both operations using two levels of parallelism.
First, we distribute the computations on multiple processes using
coarse parallelism. Second, each process uses a SIMD/GPU accelerator
locally to accelerate the operations using fine-grained parallelism.
The KKT system is reduced by eliminating the inequalities and the state
variables from the corresponding equations, to a dense matrix encoding
the sensitivities of the problem's degrees of freedom, drastically
minimizing the memory exchange. Our experiments on SIMD/GPU with
security-constrained AC optimal power flow problem show that the method
can achieve a 50x speed-up compared to the state-of-the-art method.
The Need for More Rigorous Calculation of Shadow Prices and LMPs
Dr. Xiaoming Feng, Research Fellow, Hitachi Energy (Raleigh, NC)
LMPs (locational Marginal Prices) are used in nodal electricity
markets to determine payments or charges to market participants. Due to
the great monetary impact, it is imperative LMP is defined rigorously
and calculated consistently. It has been observed the current method of
shadow price and LMP calculation could produce values that are non-
unique under certain conditions, which might signal non-economic
incentives to the market. We start with formal definitions for shadow
price and LMP and present the properties of the perturbation functions
and their computational consequences. We use simple examples to
illustrate the discrepancy between theoretical shadow price and the
shadow price calculated by state-of-the-art optimization solvers. From
the discussion, we make the case for more rigorous calculation of both
shadow prices and LMPs.
Real-Time Market Enhancements for Reliability and Efficiency
Dr. Mort Webster, Professor of Energy Engineering, Pennsylvania State
University (University Park, PA)
Dr. Anthony Giacomoni, Manager, Advanced Analytics, PJM Interconnection
(Audubon, PA)
Aravind Retna Kumar, Ph.D. Candidate, Pennsylvania State University
(University Park, PA)
Sushant Varghese, Ph.D. Candidate, Pennsylvania State University
(University Park, PA)
Shailesh Wasti, Ph.D. Candidate, Pennsylvania State University
(University Park, PA)
The projected trends in the U.S. power system, increasing wind and
solar generation and retiring fossil fuel generation, will increase the
net load variability and forecast uncertainty over the next several
decades. There has been considerable research focusing on how to
provide more flexibility to the power system. Within this line of
research, numerous market design proposals have been explored: multi-
interval dispatch, ramp products, stochastic market clearing, an
increase in flexible resources (virtual power plants (VPP), energy
storage). Although flexibility is often cited as an objective the
outcomes of concern are reliability (unserved demand and reserve
shortages), efficiency (reducing bid production cost and uplift
payments), curtailment of renewable generation, and incentives for
future flexible resources (i.e., price formation). In the U.S.,
Independent System Operator (ISO) and Regional Transmission
Organization (RTO) real-time market clearing and operations have the
following properties: they operate on a rolling horizon basis
throughout the operating day, face changing forecasts throughout the
day with forecast errors, and frequently solve a real-time unit
commitment (RUC), which is separate from the real-time dispatch. In
contrast, most of the analysis and academic literature on market design
enhancements neglect one or more of these characteristics in their
analysis framework. The separation of commitment from dispatch raises
the question: which market enhancement in which clearing engine? In
this work, we present a simulation framework for the PJM wholesale
energy markets with a rolling horizon and forecast errors.
Specifically, we simulate the solution of the day-ahead market,
followed by PJM's Intermediate-Term Security Constrained Economic
Dispatch (IT-SCED) (real-time commitment process) every 15 minutes and
PJM's Real-Time Security Constrained Economic Dispatch (RT-SCED) (real-
time dispatch) every 5 minutes throughout the operating day. Net load
forecasts change every 5 minutes. We use this framework to simulate
several of the commonly discussed market enhancements applied to either
IT-SCED, RT-SCED, or both. We consider multi-interval dispatch, ramp
products, and stochastic market clearing. Our results demonstrate that
market design changes are most successful if they addresses both
commitment (bringing enough capacity and operating range online) and
dispatch (using the online operating range effectively).
Economics of Grid-Supported Electric Power Markets: A Fundamental
Reconsideration
Dr. Leigh Tesfatsion, Research Professor of Economics, Courtesy
Research Professor of Electrical & Computer Engineering, Iowa State
University (Ames, IA)
U.S. RTO/ISO-managed wholesale power markets operating over high-
voltage AC transmission grids are transitioning from heavy reliance on
fossil-fuel based power to greater reliance on renewable power. This
presentation highlights four conceptually-problematic economic
presumptions reflected in the legacy core design of these markets that
are hindering this transition. The key problematic presumption is the
static conceptualization of the basic transacted product as grid-
delivered energy (MWh) competitively priced at designated grid delivery
locations during successive operating periods, supported by ancillary
services. The presentation then discusses an alternative conceptually-
consistent ``Linked Swing-Contract Market Design'' that appears well-
suited for the scalable support of increasingly decarbonized grid
operations with more active participation by demand-side resources.
This alternative design entails a fundamental switch to a dynamic
insurance focus on advance reserve procurement permitting continual
balancing of real-time net load. Reserve consists of the guaranteed
availability of diverse power-path production capabilities for possible
RTO/ISO dispatch during future operating periods, as protection against
volumetric grid risk. Each reserve offer submitted by a dispatchable
power resource m to a forward reserve market M(T) for a future
operating period T is a two-part pricing swing-contract in firm or
option form that permits m to ensure its revenue sufficiency.
Session W-B3 (Wednesday, June 28, 3:30 p.m.) (Hearing Room One)
Simulation of Wholesale Electricity Markets With Capacity Expansion and
Production Cost Models To Understand Feedback Between Short Term Market
Procedures and Long Term Investment Incentives
Dr. Jesse Holzer, Mathematician, Pacific Northwest National Laboratory
(Richland, WA)
Dr. Abhishek Somani, Electrical Engineer, Pacific Northwest National
Laboratory (Richland, WA)
Dr. Brent Eldridge, Electrical Engineer, Pacific Northwest National
Laboratory (Bel Air, MD)
[[Page 40249]]
Diane Baldwin, Project Manager, Pacific Northwest National Laboratory
(Richland, WA)
Wholesale electricity markets are undergoing rapid changes,
including variability and uncertainty and low prices from wind and
solar, load flexibility and price responsiveness, distributed energy
resources, energy storage, and revenue adequacy concerns. In response
to these changes, enhancements to electricity market procedures have
been proposed, including new reserve product, sloped reserve demand
curves, multi-settlement forward markets, and stochastic modeling in
market clearing optimization engines. These enhancements have the
potential to improve operational outcomes in the short term time scale
of hours to days by enabling better market responses to the changing
market conditions. But they also affect the long run incentives for
investment in grid equipment that ultimately result in the mix and
capacity of various grid technologies. This mix in turn influences
short term market conditions. We use linked models of capacity
expansion and production cost to explore this feedback between short
term and long term market conditions and to shed light on how this
feedback affects the assessment of market enhancements to address
changing market conditions.
Making the Right Resource Choice Requires Making the Right Model Choice
Dr. Rodney Kizito, Senior Manager, Ascend Analytics (Boulder, CO)
Gary W. Dorris, Ph.D., CEO, Ascend Analytics (Boulder, CO)
David Millar, Director of Consulting Services, Ascend Analytics
(Boulder, CO)
Production cost modeling simulates the operation of electric
systems. It provides a lens into a highly uncertain future, allowing
utilities to craft strategy and make critical decisions for their
customers, shareholders, and stakeholders. The power and acuity of this
lens will determine what resources will be deemed the most economic to
provide a reliable, lower-carbon supply portfolio. Resource planning
using production cost models that simulate the operation of power
systems, once a straightforward exercise of deciding how many new power
plants would be needed to meet future load growth, has become a much
more complicated and challenging enterprise. The dramatic decline in
the cost of renewables and storage technologies and the societal push
for decarbonization means planners must model more complex and
uncertain portfolio options. Renewables and their meteorologically
determined fuel supply are creating new dynamics that highlight the
need for more powerful modeling tools to capture the increasing
variability in the power supply and the ensuing effect on market price
volatility. This presentation highlights the benefits of using a new
class of resource planning models to plan for a decarbonized future.
Utilities, regulators, independent system operators, and other industry
stakeholders rely heavily on modeling to support decision making for
the allocation of scarce capital resources, as well as to ensure that
the right resources are available to maintain a high level of
reliability and resilience. This presentation argues that the older
generations of models that remain widely in use today fail to capture
the emerging dynamics of a power grid supplied primarily by renewable
energy. For this reason, industry decision makers are unknowingly
burdened by ``model-limited choice,'' which can lead to imprudent
investments in assets liable to become functionally useless and
ultimately disallowed. This presentation also provides a new
terminology to classify a model's ability to capture the new market
dynamics, high-definition production cost models (HD PCMs) versus
traditional production cost models (PCMs). HD PCMs use simulation to
capture the stochastic nature of load and electricity production
generated by renew able energy sources, as well as to drill down to a
5-minute level of temporal and spatial (i.e., nodal) granularity to
capture the flexibility requirements of renewable integration. Further,
HD PCMs mimic real-world uncertainty by simulating imperfect foresight
of future system conditions between the day-ahead forecast and the
real-time dispatch. Traditional PCMs are highly simplified because they
were developed when computing power was a significant limitation.
Today, resource planners can take advantage of the rapid increase in
computing power provided by distributed computing to upgrade their
analytical platforms to enable HD PCMs that provide more robust
analysis.
Transmission Shortage Pricing By MW-Mile Based Demand Curve
Sina Gharebaghi, Graduate Research Assistant, Pennsylvania State
University, Hitachi Energy (University Park, PA)
Dr. Xiaoming Feng, Research Fellow, Hitachi Energy (Raleigh, NC)
ISOs use transmission demand curves (TDC) in security constrained
unit commitment (SCUC) to relax transmission constraints when no
feasible solution exists with hard transmission constraints. TDC is a
penalty curve administratively specified as a function of the amount of
MW violation of the transmission line's limits. Use of TDCs to ensure
non-empty feasible solution space can result in excessively high LMP
when multiple TDCs are active. Researchers have studied a transmission
constraint screening approach to remove `redundant constraints' of
serially connected transmission lines before the pricing run to avoid
the accumulation of high shadow prices over multiple redundant
constraints for LMP calculation. The screening approach alleviates to a
large degree the occurrence of excessive LMP but has subtle and
significant unintended consequences with respect to SCUC solution
stability. We propose an alternative approach using MW-Mile based TDC
to solve the transmission constraint violation problem and eliminate
the root cause of excessive LMP without the need to remove redundant
constraints. We discuss the economic justification of the MW-Mile based
TDC approach and its advantage of solution stability with illustrative
examples.
Grid OS--A Modern Software Portfolio for Grid Orchestration
Renan Giovanini, Ph.D., MBA, Transmission Product Marketing Director,
General Electric (Edinburgh, United Kingdom)
Joseph Franz, Senior Marketing Manager, General Electric (Melbourne,
FL)
The 21st century has brought new challenges for Transmission and
Distribution Operators that were hardly perceived in the turn of the
century. There have been fast increases in bulk and micro renewable
resources in conjunction with international agreements on
CO2 emission targets. Severe droughts, and more frequent
floods happening in the same country are driving needs also. An
increasing number of changing weather patterns creating disruptions at
several levels. Data tsunami has been created due to increasing types
and number of sensors installed in the field. The grid itself was
initially designed in the early 1900s based on a uni-directional flow
requirement now is called to become bi-directional. Previous electric
software solutions were created very organically since late 1970s/early
1980s addressing
[[Page 40250]]
use-cases from that era. New tools were created over time, but always
bolted-on to existent solutions. Energy Management Systems became more
and more complex and started to present challenges in terms of
scalability and maintainability leading to increasing staff and costs.
Previous well defined siloes between Generation, Transmission and
Distribution are becoming more blurred. In order to address all of
these challenges, utilities and software companies started a journey to
re-invent itself. Based on the most recent digital technologies, these
companies created new modular and composable solution prepared for
ultra-scaling and immense amounts of data ready to leverage the most
modern mathematical algorithms and artificial intelligence methods
available to date for assisted and automated control. The need for
project executions in months as opposed to years has been taken
carefully in consideration, creating a software solution ready for
faster time-to-value. These solutions are already in production at a
few customers and a number of new use-cases are currently under proof-
of-concept, development or available for productization. The
presentation will cover some of these latest software developments and
highlight regulatory challenges to slowing the adoption of these
technologies by utilities: 1. A new market system prepared to validate
& clear more frequent and increasing number of bids with smaller
amounts of power; 2. Digital twin technologies such as digital dynamic
line ratings ready to integrate electrical and weather data to provide
real-time and forecast ampacity for transmission lines integrated to
real-time and look-ahead security assessment systems; 3. Advanced
forecasting solutions based on AI for (1) renewable power production at
T&D levels and (2) outage predictions for improved crew allocation and
faster restoration times; 4. Optimal system restoration management in
real-time in assisted and automated modes; 5. Exploration of
Distributed Energy Resource to supply grid services at transmission
level such as grid stabilization and blackstart restoration.
Day 3--Thursday, June 29
Session H1 (Thursday, June 29, 9:30 a.m.) (Commission Meeting Room)
Integration of DER Aggregations in ISO-Scale SCUC Models
Dr. Brent Eldridge, Electrical Engineer, Pacific Northwest National
Laboratory (Bel Air, MD)
Jesse Holzer, Mathematician, Pacific Northwest National Laboratory
(Richland, WA)
Abhishek Somani, Economist, Pacific Northwest National Laboratory
(Richland, WA)
Eran Schweitzer, Electrical Engineer, Pacific Northwest National
Laboratory (Richland, WA)
Rabayet Sadnan, Electrical Engineer, Pacific Northwest National
Laboratory (Richland, WA)
Nawaf Nazir, Electrical Engineer, Pacific Northwest National Laboratory
(Richland, WA)
Soumya Kundu, Electrical Engineer, Pacific Northwest National
Laboratory (Richland, WA)
FERC issued Order 2222 in September 2020, which will require all
ISOs in the U.S. to implement participation models for DER aggregators.
Among other requirements, this rule required ISOs to lower the
participation threshold for wholesale market participation to 0.1 MW.
Wider participation of these resources can bring significant benefits
to the grid, such as by locating energy supply closer to demand,
opening up more participation from the demand side, and providing an
additional flexibility source to balance intermittent renewables.
However, DER aggregations will have unique characteristics that may
pose challenges to the large-scale security-constrained unit commitment
(SCUC) software used by ISOs. This presentation will focus on the
formulation of a new mathematical model to represent the internal
constraints of a DER aggregator and the study design that is intended
to better understand the challenges associated with DER integration.
Current-Voltage AC Optimal Power Flow for Unbalanced Distribution
Network
Dr. Mojdeh Khorsand Hedman, Assistant Professor, Arizona State
University (Tempe, AZ)
Zahra Soltani, Ph.D. Candidate, Arizona State University (Tempe, AZ)
Dr. Shanshan Ma, Postdoctoral Research Scholar, Arizona State
University (Las Vegas, NV)
With proliferation of distributed energy resources (DERs),
distribution management systems (DMSs) need to be advanced in order to
enhance the reliability and efficiency of modern distribution systems.
This work proposes novel nonlinear and convex AC optimal power flow
(ACOPF) models based on current-voltage (IVACOPF) formulation for an
unbalanced distribution system with DERs. In the proposed formulation,
untransposed distribution lines, shunt elements of distribution lines,
and detailed representation of distribution transformers and DERs are
modeled. The proposed nonlinear IVACOPF model is linearized and
convexified using the Taylor series. The performance of the proposed
nonlinear and convex IVACOPF approaches is compared with OpenDSS and
the widely used LinDistFlow method for modeling unbalanced distribution
systems. The proposed accurate convex IVACOPF model has multiple
applications for distribution system management, planning, and
operation. Applications of the proposed model on two key parts of
advanced DMS, (i) DERs scheduling and (ii) simultaneous topology
processor and state estimation, will be presented. Two models are
developed including Quadratic Programming (QP) and linear programming
(LP) for performing the distribution state estimation. The performance
of the methods is compared. The proposed models are tested using
distribution feeder of an electric utility in Arizona.
Empowering Electricity Markets Through Distributed Energy Resources and
Smart Building Setpoint Optimization: A Graph Neural Network-Based Deep
Reinforcement Learning Approach
Dr. You Lin, Postdoctoral Associate, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Audun Botterud, Principal Research Scientist, Massachusetts
Institute of Technology (Cambridge, MA)
Dr. Daisy Green, Postdoctoral Associate, Massachusetts Institute of
Technology (Cambridge, MA)
Dr. Leslie Norford, Professor, Massachusetts Institute of Technology
(Cambridge, MA)
Dr. Jeremy Gregory, Executive Director of Climate and Sustainability
Consortium, Massachusetts Institute of Technology (Cambridge, MA)
Smart buildings play a pivotal role in the electricity market by
boosting energy efficiency and demand flexibility by implementing
advanced control strategies. In this study, a setpoint optimization
model is proposed using a graph neural network-based deep reinforcement
learning (DRL) algorithm that considers thermal exchanges among various
zones within buildings. By intelligently scheduling the day-ahead
temperature setpoints and adjusting the real-time setpoints in response
to dynamic conditions and price signals, DRL-based controllers can
optimize energy consumption while reducing overall costs. This
strategic energy
[[Page 40251]]
management not only benefits building occupants but also bolsters the
electricity grid through load balancing and the provision of essential
grid services. Through the testbed of MIT campus buildings, it is
demonstrated that smart buildings employing DRL for setpoint
optimization contribute to a more efficient, reliable, and sustainable
electricity market.
Multi-Timescale Operations of Nuclear-Renewable Hybrid Energy Systems
for Reserve and Thermal Products Provision
Jie Zhang, Associate Professor, University of Texas at Dallas
(Richardson, TX)
Jubeyer Rahman, Ph.D. Student, University of Texas at Dallas
(Richardson, TX)
This talk will present an optimal operation strategy of a nuclear-
renewable hybrid energy system (N-R HES), in conjunction with a
district heating network, which is developed within a comprehensive
multi-timescale electricity market framework. The grid-connected N-R
HES is simulated to explore the capabilities and benefits of N-R HES of
providing energy products, different reserve products, and thermal
products. An N-R HES optimization and control strategy is formulated to
exploit the benefits from the hybrid energy system in terms of both
energy and ancillary services. A case study is performed on the
customized NREL-118 bus test system with high renewable penetrations,
based on a multitimescale (i.e., three-cycle) production cost model.
Both day-ahead and real-time market clearing prices are determined from
the market model simulation. The results show that the N-R HES can
contribute to the reserve requirements and also meet the thermal load,
thereby increasing the economic efficiency of N-R HES (with increased
revenue ranging from 1.55% to 35.25% at certain cases) compared to the
baseline case where reserve and thermal power exports are not
optimized.
Session H2 (Thursday, June 29, 12:30 p.m.) (Commission Meeting Room)
Optimizing Stand-Alone Battery Storage Operations Scheduling Under
Uncertainties in German Residential Electricity Market Using Stochastic
Dual Dynamic Programming
Pattanun Chanpiwat, Doctoral Candidate, University of Maryland (College
Park, MD) & Aalto University (Espoo, Finland) (Silver Spring, MD)
Fabricio Oliveira, Ph.D., Associate Professor, Aalto University (Espoo,
Finland)
Steven A. Gabriel, Ph.D., Full Professor, University of Maryland
(College Park, MD)
We present a new variation of the stochastic dual dynamic
programming (SDDP) algorithm for solving multistage, convex stochastic
programming problems considering uncertainties such as electricity
prices, variable renewable energy generation, and residential demand in
the electricity market. We approximate the convex expected-cost-to-go
functions via a linear policy graph, to obtain optimal operational
strategies for the battery storage usage of residential households. We
develop a heuristic algorithm (i.e., executable on edge-computing
devices located at the households) of a residential electricity network
with a flexible structure that allows residents to efficiently hedge
their electricity consumption via community-shared battery storage
while accounting for uncertainties and limitations of the energy
system. We provide an economic assessment and insights into battery
storage scheduling strategies and the model capabilities through case
studies on a test network model of Southern German residential
households. The results are compared with other mathematical models
including a multistage stochastic convex optimization model with the
assumptions of a perfect information case and/or a business-as-usual
case.
Integration of Hybrid Storage Resources Into Wholesale Electricity
Markets
Dr. Nikita Singhal, Technical Leader, Electric Power Research Institute
(Palo Alto, CA)
Rajni Kant Bansal, Ph.D. Candidate, Johns Hopkins University
(Baltimore, MD)
Dr. Erik Ela, Program Manager, Electric Power Research Institute (Palo
Alto, CA)
Dr. Julie Mulvaney Kemp, Research Scientist, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Dr. Miguel Heleno, Research Scientist, Lawrence Berkeley National
Laboratory (Berkeley, CA)
Electric storage resources and other technologies that are co-
located and share a common point of interconnection are presently being
incorporated into bulk power systems in increasing numbers, with more
hybrid storage resources planned and under study within interconnection
queues. Such hybrid storage resources are predominantly seen being
combined with variable energy resources and are either being operated
as two separate resources or as a single integrated resource. Market
designers and system operators are presently researching ways to
effectively integrate hybrid storage resources into their existing
system operations and scheduling processes given the ambiguity around
their impacts, particularly when high levels of hybrid resources are
present. This research explores advanced market participation modeling
options for integrating utility-scale hybrid storage resources into
market clearing software in addition to discussing the economic and
reliability implications of the different modeling options. This
includes the consecutive impact of the participation models on the
market clearing software solution and the dispatch and revenue of
hybrid battery projects. The alternate participation models evaluated
in this research include two separate resources ISO-managed co-located
participation model, single integrated resource self-managed hybrid
participation model and two separate resources ISO-managed linked co-
located participation model.
Predicting Strategic Energy Storage Behaviors
Yuexin Bian, Ph.D. Student, University of California, San Diego (San
Diego, CA)
Ningkun Zheng, Ph.D. Student, Columbia University (New York City, NY)
Yang Zheng, Assistant Professor, University of California, San Diego
(San Diego, CA)
Bolun Xu, Assistant Professor, Columbia University (New York, NY)
Yuanyuan Shi, Assistant Professor, University of California, San Diego
(San Diego, CA)
Energy storage are strategic participants in electricity markets to
arbitrage price differences. Future power system operators must
understand and predict strategic storage arbitrage behaviors for market
power monitoring and capacity adequacy planning. This paper proposes a
novel data-driven approach that incorporates prior model knowledge for
predicting the behaviors of strategic storage participants. We propose
a gradient-descent method to find the storage model parameters given
the historical price signals and observations. We prove that the
identified model parameters will converge to the true user parameters
under a class of quadratic objective and linear equality-constrained
storage models. We demonstrate the effectiveness of our approach
through numerical experiments with synthetic and real-world storage
behavior data. The proposed approach significantly
[[Page 40252]]
improves the accuracy of storage model identification and behavior
forecasting compared to previous blackbox data-driven approaches.
Energy Storage Participation Algorithm Competition (ESPA-Comp)
Dr. Brent Eldridge, Electrical Engineer, Pacific Northwest National
Laboratory (Bel Air, MD)
Jesse Holzer, Mathematician, Pacific Northwest National Laboratory
(Richland, WA)
Abhishek Somani, Economist, Pacific Northwest National Laboratory
(Richland, WA)
Kostas Oikonomou, Electrical Engineer, Pacific Northwest National
Laboratory (Richland, WA)
Brittany Tarufelli, Economist, Pacific Northwest National Laboratory
(Laramie, WY)
Li He, Electrical Engineer, Pacific Northwest National Laboratory
(Richland, WA)
Energy Storage Participation Algorithm Competition (ESPA-Comp) is
an upcoming pilot competition that will challenge participants to
develop innovative algorithms for energy storage participation in
wholesale electricity markets. Energy storage technologies will play a
critical role in making sure we have access to reliable and low-cost
electricity. However, optimizing energy storage systems in wholesale
electricity markets is a complex task that requires sophisticated
algorithms to accurately predict electricity prices and account for the
physical constraints of energy storage technologies. ESPA-Comp aims to
bring together researchers, engineers, and students with expertise in
AI/ML, optimization, and economics to develop algorithms that can
effectively address these challenges. In this competition, participants
will ``operate'' an energy storage resource in a simulated wholesale
electricity market and will be awarded based on the profits they earn.
Participants will need to submit algorithms that generate strategic
offer curves, taking into account factors like weather, market
competition, and network congestion. Competition results will help us
to understand how different market designs can affect storage
incentives and support the efficient use of storage resources.
Session H3 (Thursday, June 29, 3:00 p.m.) (Commission Meeting Room)
Congestion Mitigation With Transmission Reconfigurations in the Evergy
Footprint
Dr. Pablo A. Ruiz, CEO and CTO, NewGrid, Inc. (Somerville, MA)
Derek Brown, Regulatory Affairs Manager, Evergy (Topeka, KS)
Jeremy Harris, Transmission Operations Planning Manager, Evergy
(Topeka, KS)
German Lorenzon, Senior Engineer, NewGrid (Somerville, MA)
Grant Wilkerson, Director of Business Development, Evergy (Kansas City,
MO)
Transmission needs are becoming more variable and are rising
rapidly, as shown by significant increases in congestion management
costs and in the frequency of transmission overloads. Further,
transmission capability has been critical during recent extreme events,
to support power transfers from less affected areas to the more
affected ones. Topology optimization software is a grid-enhancing
technology that identifies reconfiguration options to re-route power
flow around transmission bottlenecks employing less utilized facilities
and satisfying reliability criteria. These reconfigurations provide
cost savings to power customers and increase the transmission network
performance from both reliability and market efficiency perspectives.
At the same time, the use of reconfigurations remains limited. For
example, the usual practice in the Southwest Power Pool is to employ
known reconfigurations as a last resort, after resource redispatch is
exhausted and constraints are breached. This presentation will discuss
the reliability and cost saving impacts of reconfigurations implemented
in the Evergy footprint to mitigate congestion under the current SPP
practice, as well as illustrate additional benefits that could be
obtained if topology optimization opportunities were used proactively
to address congestion.
Optimal Transmission Expansion Planning With Grid Enhancing
Technologies
Swaroop Srinivasrao Guggilam, Senior Engineer, Electric Power Research
Institute (Knoxville, TN)
Alberto Del Rosso, Program Manager, Electric Power Research Institute
(Knoxville, TN)
The power system is evolving with a rapid increase in demand. It
provokes rethinking ways to increase generation and expand the system's
capacity to support it. This combination of fast-paced demand growth
and supply has made the planning and expansion of the transmission
system challenging in recent years. The futuristic hyperactive power
system grid needs to be versatile. The grid should be able to host a
variety of renewable energy resources, adapt to various system
conditions, be highly secured under extreme events, and be dynamically
responsive to make the power system reliable. All this is to be
achieved at minimal cost to the customers and efficiently. The
traditional transmission solutions will continue to be the backbone of
the power system transmission grid, but upcoming state-of-the-art grid-
enhancing technologies can significantly aid in supporting these ever-
changing power system grid requirements with optimal cost and improved
efficiency. Various grid-enhancing technologies include power flow
control devices such as SmartValve devices and phase shift
transformers, dynamic and adaptive transmission line ratings, and
optimal topology control. The increasing penetration of distributed
energy resources such as batteries also activates a different avenue to
pursue being able to support transmission expansion planning needs. The
term around the battery as a viable alternative is coined as a non-wire
alternative solution. In many utilities, it's necessary to assess the
non-wire alternative solutions such as batteries to meet FERC
requirements. Developing and analyzing these various modern
transmission solutions that work in tandem is challenging. One needs
proper technical characterization of these technologies and assess the
technology readiness. One also needs to evaluate its performance under
normal and extreme conditions, the flexibility to deploy and install
these technologies, calculate capital and operational costs, understand
different available control options for these devices, and analyze
potential limitations. Suitable analytical methods and high-performing
software tools are needed to run the optimization simulations to enable
integration and efficient use of these grid-enhancing technologies.
EPRI has developed a software tool called CPLANET (Controlled PLANning
Expansion Tool) that helps identify effective and low-cost solutions
for mitigating thermal overloads in a power system over various
operating scenarios. An optimal solution is determined from a given set
of candidate projects, including various grid-enhancing technologies
and traditional transmission expansion projects such as installing new
transmission lines or upgrading existing substations. The software uses
a mixed-integer linear programming formulation in the optimization
engine to identify the least-cost solution for the grid's various
physical and operating needs. The scope and goal of this presentation
are to discuss the ongoing efforts at EPRI's forefront around grid-
enhancing technologies. Showcase the current capabilities of the
CPLANET tool and
[[Page 40253]]
discuss case studies and share existing challenges and future goals.
The Key Role of Extended ACOPF-Based Decision Making for Supporting
Clean, Cost-Effective and Reliable/Resilient Electricity Services
Maria Iilic, Professor Emerita, Carnegie Mellon University (Pittsburgh,
PA)
Rupamathi Jaddivada, Director of Innovation, SmartGridz (Boston, MA)
Jeffrey Lang, Vitesse Professor, Massachusetts Institute of Technology
(Cambridge, MA)
Eric Allen, Director of Engineering, SmartGridz (Boston, MA)
Societal objectives are rapidly moving towards decarbonized,
affordable, and reliable/resilient electricity services. In this talk
we first revisit these objectives by identifying basic changes and the
related challenges taking place. In particular, decarbonization
requires planning and operations of the changing electric energy
systems so that seamless integration of clean resources, ranging across
wind, solar, nuclear, geothermal, and hydro, is enabled. Notably, this
must be done with an eye on generation adequacy. Also, these new
resources present locational issues (NIMBY) in operating the existing
power grid. Finally, the end users still must be served without
interruptions and without being exposed to wide-spread blackouts.
Similar challenges are related to ensuring cost-effective and reliable/
resilient services. Second, we show how an extended (robust, adaptive,
multi-temporal) ACOPF is essential for meeting these societal
challenges. Pretty much any of the new software needed (for wind
integration, resilient service, and preventing blackouts) requires
effective optimization tools for identifying the main bottlenecks/
obstacles to physical implementation and for advising operators and
planners regarding the most effective remedial actions (new investments
and/or flexible utilization). We illustrate potential benefits from
utilizing ACOPF as a basic means of supporting software tools needed
for meeting the societal challenges. We offer a taxonomy of such badly
needed tools and illustrate the role of extended ACOPF estimated
benefits on several real-world systems based on our work to-date.
Data & API Standards for Clean Energy Solutions and Digital Innovation
Priya Barua, Director of Market Policy and Innovation, Clean Energy
Buyers Institute (Washington, DC)
Ben Gerber, President & CEO, M-RETS (Minneapolis, MN)
There is an opportunity for energy attribute certificate (EAC)
issuing bodies in the U.S. and abroad to enable next generation carbon-
free electricity (CFE) procurement solutions that accelerate grid
decarbonization investments by capturing more attributes and better
serving as a digital ``platform of platforms''. Energy customers who
buy clean energy rely on EACs to assert ownership claims over each
megawatt-hour of CFE they procure for auditing, reporting, and
marketing purposes. EAC issuing bodies promote CFE procurement
integrity and validation by issuing, tracking, and canceling EACs,
which each represent a unique standardized tradable instrument
representing one megawatt-hour of verified CFE generation. By adopting
open data and automated programming interface (API) standards, EAC
issuing bodies can improve data access and solutions for customers.
This session will explore opportunities for EAC issuing bodies to
establish consistent, modern automated programming interfaces (APIs),
template legal agreements, and other tools that will make it easier for
data providers to deliver data and for users to update the status of
EACs through connected digital trading platforms-- enabling innovation
for CFE procurement solutions.
Mine Production Scheduling Under Time-of-Use Power Rates With Renewable
Energy Sources
Dr. Daniel Bienstock, Professor, Columbia University (New York, NY)
Amy Mcbrayer, Ph.D. Candidate, South Dakota School of Mines (Rapid
City, SD)
Andrea Brickey, Professor, South Dakota School of Mines (Rapid City,
SD)
Alexandra Newman, Professor, Colorado School of Mines (Golden, CO)
Renewable energy use on active and reclaimed mine lands has
increased dramatically in recent years. With mining companies focused
on increasing efficiencies, reducing carbon intensity, and developing
sustainable mining practices, opportunity exists to integrate data on
electricity usage and demand into mine production schedules to
capitalize on alternative energy sources and to take advantage of
favorable pricing strategies. Utilizing real data from an active coal
mine that has already integrated electric equipment into their loading
fleet, we show the impacts of (i) seasonal power price fluctuations on
a medium-term production schedule; and, (ii) hourly power price
fluctuations on a short-term extraction schedule. Results reveal the
economic potential both for: (i) the integration of renewable energy
sources on reclaimed and active mine lands; and (ii), the corresponding
synchronization of a production schedule with time-of-use energy
pricing contracts.
[FR Doc. 2023-13168 Filed 6-20-23; 8:45 am]
BILLING CODE 6717-01-P