Machine Learning for Fairness-Aware Load Shedding: A Real-Time Solution via Identifying Binding Constraints

Research output: Contribution to conferencePaper

Abstract

Timely and effective load shedding in power systems is critical for maintaining supply-demand balance and preventing cascading blackouts. To eliminate load shedding bias against specific regions in the system, optimization-based methods are uniquely positioned to help balance between economic and fairness considerations. However, the resulting optimization problem involves complex constraints, which can be time-consuming to solve and thus cannot meet the real-time requirements of load shedding. To tackle this challenge, in this paper we present an efficient machine learning algorithm to enable millisecond-level computation for the optimization-based load shedding problem. Numerical studies on both a 3-bus toy example and a realistic RTS-GMLC system have demonstrated the validity and efficiency of the proposed algorithm for delivering fairness-aware and real-time load shedding decisions.
Original languageAmerican English
Pages742-747
Number of pages6
DOIs
StatePublished - 2025
Event2025 American Control Conference (ACC) - Denver, CO
Duration: 8 Jul 202510 Jul 2025

Conference

Conference2025 American Control Conference (ACC)
CityDenver, CO
Period8/07/2510/07/25

NREL Publication Number

  • NREL/CP-5D00-97384

Keywords

  • binding constraints
  • fairness-aware
  • machine learning
  • optimal load shedding
  • optimality analysis

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