Autoregressive Modeling of Utility Customer Outages with Deep Neural Networks

K. Udeh, D. Wanik, D. Cerrai, Derek Aguiar, E. Anagnostou
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引用次数: 3

Abstract

More and more frequently, electric utility emergency response personnel are required to manage the impact of severe weather events on electric distribution networks. In the US, economic losses associated with extreme weather events are estimated between $20 billion and $55 billion annually. Spatiotemporal modeling of customer outages from weather data can mitigate the economic and personal impact of adverse weather by reducing customer downtimes and increasing customer confidence in electric utility providers during a power outage event. In this paper, we consider the problem of customer outage forecasting by integrating distributed temporal and spatial weather data with deep learning prediction models. Using weather and outage data from ten random counties across New York State, we fit separate spatiotemporal models based on long short-term memory (LSTM) and convolutional neural networks (CNN) to predict customer outages over a 48 hour forecast horizon. Specifically, we consider both autoregressive and covariate-dependent signatures of variation in the development of three model architectures that predict (a) county-level outages given county-level data, (b) county-level outages given state-level data, and (c) state-level outages given state-level data. We compare our methods against statistical approaches (ARIMA, ARIMAX and VARMAX) and a persistence-based method. The results demonstrate that our method achieves better performance over the baselines in terms of root mean square error, median absolute error, Pearson correlation, and average relative error, thus providing an effective tool for electric utility companies to prepare for adverse weather events.
基于深度神经网络的电力客户停电自回归建模
电力公司越来越频繁地需要应急响应人员来管理恶劣天气事件对配电网的影响。在美国,与极端天气事件相关的经济损失估计在每年200亿至550亿美元之间。根据天气数据对客户停电进行时空建模,可以减少客户停机时间,并在停电事件期间提高客户对电力公司的信心,从而减轻恶劣天气对经济和个人的影响。在本文中,我们通过将分布式时空天气数据与深度学习预测模型相结合来考虑客户停电预测问题。利用纽约州十个随机县的天气和停电数据,我们拟合了基于长短期记忆(LSTM)和卷积神经网络(CNN)的单独时空模型,以预测48小时内的客户停电预测范围。具体来说,我们在三个模型架构的开发中考虑了自回归和协变量相关的变化特征,这些模型架构预测(a)给定县级数据的县级停电,(b)给定州级数据的县级停电,以及(c)给定州级数据的州级停电。我们将我们的方法与统计方法(ARIMA, ARIMAX和VARMAX)和基于持久性的方法进行比较。结果表明,该方法在均方根误差、绝对误差中位数、Pearson相关性和平均相对误差方面均优于基线,为电力公司应对恶劣天气事件提供了有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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