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Bibliographic Details
Main Authors: Mohammadian, Mostafa, Van Boven, Anna, Baker, Kyri
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.06369
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author Mohammadian, Mostafa
Van Boven, Anna
Baker, Kyri
author_facet Mohammadian, Mostafa
Van Boven, Anna
Baker, Kyri
contents Electric power grids are essential components of modern life, delivering reliable power to end-users while adhering to a multitude of engineering constraints and requirements. In grid operations, the Optimal Power Flow problem plays a key role in determining cost-effective generator dispatch that satisfies load demands and operational limits. However, due to stressed operating conditions, volatile demand profiles, and increased generation from intermittent energy sources, this optimization problem may become infeasible, posing risks such as voltage instability and line overloads. This study proposes a learning framework that combines machine learning with counterfactual explanations to automatically diagnose and restore feasibility in the OPF problem. Our method provides transparent and actionable insights by methodically identifying infeasible conditions and suggesting minimal demand response actions. We evaluate the proposed approach on IEEE 30-bus and 300-bus systems, demonstrating its capability to recover feasibility with high success rates and generating diverse corrective options, appropriate for real-time decision-making. These preliminary findings illustrate the potential of combining classical optimization with explainable AI techniques to enhance grid reliability and resilience.
format Preprint
id arxiv_https___arxiv_org_abs_2504_06369
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Restoring Feasibility in Power Grid Optimization: A Counterfactual ML Approach
Mohammadian, Mostafa
Van Boven, Anna
Baker, Kyri
Systems and Control
Electric power grids are essential components of modern life, delivering reliable power to end-users while adhering to a multitude of engineering constraints and requirements. In grid operations, the Optimal Power Flow problem plays a key role in determining cost-effective generator dispatch that satisfies load demands and operational limits. However, due to stressed operating conditions, volatile demand profiles, and increased generation from intermittent energy sources, this optimization problem may become infeasible, posing risks such as voltage instability and line overloads. This study proposes a learning framework that combines machine learning with counterfactual explanations to automatically diagnose and restore feasibility in the OPF problem. Our method provides transparent and actionable insights by methodically identifying infeasible conditions and suggesting minimal demand response actions. We evaluate the proposed approach on IEEE 30-bus and 300-bus systems, demonstrating its capability to recover feasibility with high success rates and generating diverse corrective options, appropriate for real-time decision-making. These preliminary findings illustrate the potential of combining classical optimization with explainable AI techniques to enhance grid reliability and resilience.
title Restoring Feasibility in Power Grid Optimization: A Counterfactual ML Approach
topic Systems and Control
url https://arxiv.org/abs/2504.06369