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Power Systems Computation Conference 2026

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Machine Learning Guided Optimal Transmission Switching To Mitigate Wildfire Ignition Risk

To mitigate acute wildfire ignition risks, utilities deenergize power lines in high-risk areas. The Optimal Power Shutoff (OPS) problem optimizes line energization statuses to manage wildfire ignition risks through de-energizations while reducing load shedding. OPS problems are computationally challenging Mixed-Integer Linear Programs (MILPs) that must be solved rapidly and frequently in operational settings. For a particular power system, OPS instances share a common structure with varying parameters related to wildfire risks, loads, and renewable generation. This motivates the use of Machine Learning (ML) for solving OPS problems by exploiting shared patterns across instances. In this paper, we develop an ML-guided framework that quickly produces high-quality de-energization decisions by extending existing ML-guided MILP solution methods while integrating domain knowledge on the number of energized and de-energized lines. Results on a large-scale realistic Californiabased synthetic test system show that the proposed ML-guided method produces high-quality solutions faster than traditional optimization methods.

Weimin Huang
University of Southern California
United States

Ryan Piansky
Georgia Institute of Technology
United States

Bistra Dilkina
University of Southern Californiav
United States

Daniel Molzahn
Georgia Institute of Technology
United States

 


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