LGSYNov 18, 2024

Transmission Line Outage Probability Prediction Under Extreme Events Using Peter-Clark Bayesian Structural Learning

arXiv:2411.11980v14 citationsh-index: 1IEEE Power & Energy Society General Meeting
Originality Incremental advance
AI Analysis

This work addresses the need for accurate outage predictions for power grid operators during extreme weather, though it appears incremental as it builds on existing Bayesian network methods.

The paper tackles the problem of predicting transmission line outage probabilities under extreme weather events by introducing a Bayesian network combined with Peter-Clark structural learning, achieving precise probability calculations and demonstrating better scalability and robust performance with limited data in case studies using BPA and NOAA data.

Recent years have seen a notable increase in the frequency and intensity of extreme weather events. With a rising number of power outages caused by these events, accurate prediction of power line outages is essential for safe and reliable operation of power grids. The Bayesian network is a probabilistic model that is very effective for predicting line outages under weather-related uncertainties. However, most existing studies in this area offer general risk assessments, but fall short of providing specific outage probabilities. In this work, we introduce a novel approach for predicting transmission line outage probabilities using a Bayesian network combined with Peter-Clark (PC) structural learning. Our approach not only enables precise outage probability calculations, but also demonstrates better scalability and robust performance, even with limited data. Case studies using data from BPA and NOAA show the effectiveness of this approach, while comparisons with several existing methods further highlight its advantages.

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