预测分析估计居民参与住宅需求响应计划的水平

Saurav M. S. Basnet, W. Jewell
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引用次数: 2

摘要

需求响应计划正在成为电力系统不可或缺的一部分,有助于在电力服务提供商和客户之间建立更紧密的联系。本文所描述的研究使用高峰需求事件期间的居民需求响应(DR)计划。正如在市场营销业务中一样,识别目标客户在DR计划中是至关重要的,从而使其更高效和富有成效。此外,高峰负荷事件在电力系统中非常关键;因此,建立一个有效的需求响应计划模型至关重要。这里的目的是使用预测分析来估计居民参与DR计划的水平,从而在峰值负载事件期间可用的负载减少能力。研究分为两个不同的部分:将预测分析应用于考虑进行灾难恢复计划的居民,并为从预测分析中获得的每个集群开发一个居民灾难恢复模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Analytics to Estimate Level of Residential Participation in Residential Demand Response Program
Demand response programs are becoming an integral part of the power system, helping create a closer alignment between the electrical service providers and customers. The research described in this paper uses the residential demand response (DR) program during a peak demand event. As in the marketing business, identifying target customers is vital in the DR program, thus making it more efficient and productive. Additionally, peak load events are very critical in the power system; therefore, it is essential to model an effective demand response program.The intent here is to use predictive analytics to estimate the level of residential participation in a DR program, and thus the load reduction capacity available, during peak load events. The research is divided into two different parts: apply predictive analytics to residents being considered for a DR program, and develop a residential DR model for each cluster obtained from predictive analytics.
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