利用EAGLE-I和NWS数据集预测极端天气事件中的停电情况

Sangkeun Lee, J. Choi, Gs Jung, Anika Tabassum, Nils Stenvig, S. Chinthavali
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引用次数: 0

摘要

极端天气事件,如飓风、严重雷暴和洪水会严重破坏电网系统,导致电力中断,造成不便、经济损失和危及生命的情况。人们越来越需要一个强大而精确的预测模型来预测停电,这将有助于在极端天气事件发生之前、期间和之后优先考虑应急响应。在本文中,我们引入了机器学习模型来预测极端天气事件期间和之后州一级的停电风险。我们共同利用了两个公开可用的数据集:由地理定位能源信息环境分析(EAGLE-$\ mathm {I}^{\ mathm {T}\ mathm {M}}$)系统收集的美国历史停电数据,以及国家气象局历史天气警报数据集。我们强调了我们的初步结果,并讨论了旨在提高模型在现实世界应用中的鲁棒性和准确性的未来工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Power Outage During Extreme Weather Events with EAGLE-I and NWS Datasets
Extreme weather events, such as hurricanes, severe thunderstorms, and floods can significantly disrupt power grid systems, leading to electrical outages that result in inconvenience, economic losses, and life-threatening situations. There is a growing need for a robust and precise predictive model to forecast power outages, which will help prioritize emergency response before, during, and after extreme weather events. In this paper, we introduce machine-learning models that predict power outage risk at the state level during and after extreme weather events. We jointly utilized two publicly available datasets: the U.S. historical power outage data collected by the Environment for Analysis of Geo-Located Energy Information (EAGLE-$\mathrm{I}^{\mathrm{T}\mathrm{M}}$) system, and the National Weather Service historical weather alert data sets. We highlight our initial result and discuss future work aimed at enhancing the model’s robustness and accuracy for real-world applications.
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