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Impact of Data Poisoning Attacks on Feasibility and Optimality of Neural Power System Optimizers

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arxiv 2502.05727 v1 pith:V7KGC762 submitted 2025-02-09 cs.LG

Impact of Data Poisoning Attacks on Feasibility and Optimality of Neural Power System Optimizers

classification cs.LG
keywords attackspoisoningpowerdataimpactoptimizersproxiessystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The increased integration of clean yet stochastic energy resources and the growing number of extreme weather events are narrowing the decision-making window of power grid operators. This time constraint is fueling a plethora of research on Machine Learning-, or ML-, based optimization proxies. While finding a fast solution is appealing, the inherent vulnerabilities of the learning-based methods are hindering their adoption. One of these vulnerabilities is data poisoning attacks, which adds perturbations to ML training data, leading to incorrect decisions. The impact of poisoning attacks on learning-based power system optimizers have not been thoroughly studied, which creates a critical vulnerability. In this paper, we examine the impact of data poisoning attacks on ML-based optimization proxies that are used to solve the DC Optimal Power Flow problem. Specifically, we compare the resilience of three different methods-a penalty-based method, a post-repair approach, and a direct mapping approach-against the adverse effects of poisoning attacks. We will use the optimality and feasibility of these proxies as performance metrics. The insights of this work will establish a foundation for enhancing the resilience of neural power system optimizers.

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