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Comparison and Validation of Statistical Methods for Predicting Power Outage Durations in the Event of Hurricanes

机译:飓风事件中预测停电持续时间的统计方法的比较和验证

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摘要

This article compares statistical methods for modeling power outage durations during hurricanes and examines the predictive accuracy of these methods. Being able to make accurate predictions of power outage durations is valuable because the information can be used by utility companies to plan their restoration efforts more efficiently. This information can also help inform customers and public agencies of the expected outage times, enabling better collective response planning, and coordination of restoration efforts for other critical infrastructures that depend on electricity. In the long run, outage duration estimates for future storm scenarios may help utilities and public agencies better allocate risk management resources to balance the disruption from hurricanes with the cost of hardening power systems. We compare the out-of-sample predictive accuracy of five distinct statistical models for estimating power outage duration times caused by Hurricane Ivan in 2004. The methods compared include both regression models (accelerated failure time (AFT) and Cox proportional hazard models (Cox PH)) and data mining techniques (regression trees, Bayesian additive regression trees (BART), and multivariate additive regression splines). We then validate our models against two other hurricanes. Our results indicate that BART yields the best prediction accuracy and that it is possible to predict outage durations with reasonable accuracy.
机译:本文比较了用于模拟飓风期间停电持续时间的统计方法,并检验了这些方法的预测准确性。能够准确预测断电持续时间非常重要,因为公用事业公司可以使用该信息来更有效地计划恢复工作。此信息还可以帮助将预期的停电时间告知客户和公共机构,从而实现更好的集体响应计划,并协调其他依赖电力的关键基础设施的恢复工作。从长远来看,对未来风暴情景的停电持续时间估算可能有助于公用事业和公共机构更好地分配风险管理资源,以平衡飓风带来的破坏与加固电力系统的成本。我们比较了五个不同的统计模型的样本外预测准确性,以估计2004年飓风伊万造成的停电时间。比较的方法包括回归模型(加速故障时间(AFT)和Cox比例风险模型(Cox PH ))和数据挖掘技术(回归树,贝叶斯加性回归树(BART)和多元加性回归样条)。然后,我们针对其他两个飓风验证了我们的模型。我们的结果表明,BART可以提供最佳的预测精度,并且可以以合理的精度预测中断时间。

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