Using Cluster Analysis and Dynamic Programming for Demand Response Applied to Electricity Load in Residential Homes

P. Chanpiwat, S. Gabriel, R. Moglen, Michael Siemann
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引用次数: 4

Abstract

This paper develops means to analyze and cluster residential households into homogeneous groups based on the electricity load. Classifying customers by electricity load profiles is a top priority for retail electric providers (REPs), so they can plan and conduct demand response (DR) effectively. We present a practical method to identify the most DR-profitable customer groups as opposed to tailoring DR programs for each separate household, which may be computationally prohibitive. Electricity load data of 10,000 residential households from 2017 located in Texas was used. The study proposed the clustered load-profile method (CLPM) to classify residential customers based on their electricity load profiles in combination with a dynamic program for DR scheduling to optimize DR profits. The main conclusions are that the proposed approach has an average 2.3% profitability improvement over a business-as-usual heuristic. In addition, the proposed method on average is approximately 70 times faster than running the DR dynamic programming separately for each household. Thus, our method not only is an important application to provide computational business insights for REPs and other power market participants but also enhances resilience for power grid with an advanced DR scheduling tool.
聚类分析与动态规划在住宅用电负荷需求响应中的应用
本文提出了一种基于电力负荷对居民家庭进行分析和聚类的方法。根据电力负荷概况对客户进行分类是零售电力供应商(rep)的首要任务,因此他们可以有效地计划和执行需求响应(DR)。我们提出了一种实用的方法来确定最具DR利润的客户群体,而不是为每个单独的家庭定制DR计划,这可能在计算上令人望而却步。该研究使用了2017年德克萨斯州1万户家庭的电力负荷数据。本文提出了基于用户用电负荷分布的聚类负荷分布方法,并结合容灾调度的动态规划来优化容灾收益。主要结论是,与“一切照常”的启发式方法相比,该方法的盈利能力平均提高了2.3%。此外,所提出的方法平均比每个家庭单独运行DR动态规划快约70倍。因此,我们的方法不仅是为rep和其他电力市场参与者提供计算业务见解的重要应用,而且通过先进的DR调度工具增强电网的弹性。
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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