Learning Optimization Proxies for Large-Scale Security-Constrained Economic Dispatch

12/27/2021
by   Wenbo Chen, et al.
10

The Security-Constrained Economic Dispatch (SCED) is a fundamental optimization model for Transmission System Operators (TSO) to clear real-time energy markets while ensuring reliable operations of power grids. In a context of growing operational uncertainty, due to increased penetration of renewable generators and distributed energy resources, operators must continuously monitor risk in real-time, i.e., they must quickly assess the system's behavior under various changes in load and renewable production. Unfortunately, systematically solving an optimization problem for each such scenario is not practical given the tight constraints of real-time operations. To overcome this limitation, this paper proposes to learn an optimization proxy for SCED, i.e., a Machine Learning (ML) model that can predict an optimal solution for SCED in milliseconds. Motivated by a principled analysis of the market-clearing optimizations of MISO, the paper proposes a novel ML pipeline that addresses the main challenges of learning SCED solutions, i.e., the variability in load, renewable output and production costs, as well as the combinatorial structure of commitment decisions. A novel Classification-Then-Regression architecture is also proposed, to further capture the behavior of SCED solutions. Numerical experiments are reported on the French transmission system, and demonstrate the approach's ability to produce, within a time frame that is compatible with real-time operations, accurate optimization proxies that produce relative errors below 0.6%.

READ FULL TEXT

page 1

page 12

page 13

research
09/26/2022

Just-In-Time Learning for Operational Risk Assessment in Power Grids

In a grid with a significant share of renewable generation, operators wi...
research
07/08/2023

Optimization-based Learning for Dynamic Load Planning in Trucking Service Networks

The load planning problem is a critical challenge in service network des...
research
12/01/2022

Enabling Fast Unit Commitment Constraint Screening via Learning Cost Model

Unit commitment (UC) are essential tools to transmission system operator...
research
03/31/2023

A Physics-Informed Machine Learning for Electricity Markets: A NYISO Case Study

This paper addresses the challenge of efficiently solving the optimal po...
research
04/02/2022

Risk-Aware Control and Optimization for High-Renewable Power Grids

The transition of the electrical power grid from fossil fuels to renewab...
research
10/27/2017

Modeling and Real-Time Scheduling of DC Platform Supply Vessel for Fuel Efficient Operation

DC marine architecture integrated with variable speed diesel generators ...
research
07/07/2017

Methodology for Multi-stage, Operations- and Uncertainty-Aware Placement and Sizing of FACTS Devices in a Large Power Transmission System

We develop new optimization methodology for planning installation of Fle...

Please sign up or login with your details

Forgot password? Click here to reset