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Power Systems Computation Conference 2024

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Multistage Stochastic Program For Mitigating Power System Risks Under Wildfire Disruptions

The frequency of wildfire disasters has surged fivefold in the past 50 years due to climate change. Preemptive de-energization is a potent strategy to mitigate wildfire risks but substantially impacts customers. We propose a multistage stochastic programming model for proactive de-energization planning, aiming to minimize economic loss while accomplishing a fair load delivery. We model wildfire disruptions as stochastic disruptions with varying timing and intensity, introduce a cutting-plane decomposition algorithm, and test our approach on the RTS-GLMC test case. Our model consistently offers a robust and fair de-energization plan that mitigates wildfire damage costs and minimizes load-shedding losses, particularly when pre-disruption restoration is considered.

Hanbin Yang
The Chinese University of Hong Kong, Shenzhen
China

Haoxiang Yang
The Chinese University of Hong Kong, Shenzhen
China

Noah Rhodes
University of Wisconsin, Madison
United States

Line Roald
University of Wisconsin, Madison
United States

Lewis Ntaimo
Texas A&M University
United States

 


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