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Main Authors: Chevalier, Samuel, Starkenburg, Duncan, Parker, Robert, Rhodes, Noah
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.23806
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author Chevalier, Samuel
Starkenburg, Duncan
Parker, Robert
Rhodes, Noah
author_facet Chevalier, Samuel
Starkenburg, Duncan
Parker, Robert
Rhodes, Noah
contents Solving for globally optimal line switching decisions in AC transmission grids can be intractability slow. Machine learning (ML) models, meanwhile, can be trained to predict near-optimal decisions at a fraction of the speed. Verifying the performance and impact of these ML models on network operation, however, is a critically important step prior to their actual deployment. In this paper, we train a Neural Network (NN) to solve the optimal power shutoff line switching problem. To assess the worst-case load shedding induced by this model, we propose a bilevel attacker-defender verification approach that finds the NN line switching decisions that cause the highest quantity of network load shedding. Solving this problem to global optimality is challenging (due to AC power flow and NN nonconvexities), so our approach exploits a convex relaxation of the AC physics, combined with a local NN search, to find a guaranteed lower bound on worst--case load shedding. These under-approximation bounds are solved via MathOptAI.jl. We benchmark against a random sampling approach, and we find that our optimization-based approach always finds larger load shedding. Test results are collected on multiple PGLib test cases and on trained NN models which contain more than 10 million model parameters.
format Preprint
id arxiv_https___arxiv_org_abs_2510_23806
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publishDate 2025
record_format arxiv
spellingShingle Maximal Load Shedding Verification for Neural Network Models of AC Line Switching
Chevalier, Samuel
Starkenburg, Duncan
Parker, Robert
Rhodes, Noah
Systems and Control
Solving for globally optimal line switching decisions in AC transmission grids can be intractability slow. Machine learning (ML) models, meanwhile, can be trained to predict near-optimal decisions at a fraction of the speed. Verifying the performance and impact of these ML models on network operation, however, is a critically important step prior to their actual deployment. In this paper, we train a Neural Network (NN) to solve the optimal power shutoff line switching problem. To assess the worst-case load shedding induced by this model, we propose a bilevel attacker-defender verification approach that finds the NN line switching decisions that cause the highest quantity of network load shedding. Solving this problem to global optimality is challenging (due to AC power flow and NN nonconvexities), so our approach exploits a convex relaxation of the AC physics, combined with a local NN search, to find a guaranteed lower bound on worst--case load shedding. These under-approximation bounds are solved via MathOptAI.jl. We benchmark against a random sampling approach, and we find that our optimization-based approach always finds larger load shedding. Test results are collected on multiple PGLib test cases and on trained NN models which contain more than 10 million model parameters.
title Maximal Load Shedding Verification for Neural Network Models of AC Line Switching
topic Systems and Control
url https://arxiv.org/abs/2510.23806