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C-Vine Copula Mixture Model for Clustering of Residential Electrical Load Pattern Data

机译:用于住宅电气负荷模式数据聚类的C型藤Copula混合物模型

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摘要

The ongoing deployment of residential smart meters in numerous jurisdictions has led to an influx of electricity consumption data. This information presents a valuable opportunity to suppliers for better understanding their customer base and designing more effective tariff structures. In the past, various clustering methods have been proposed for meaningful customer partitioning. This paper presents a novel finite mixture modeling framework based on C-vine copulas (CVMM) for carrying out consumer categorization. The superiority of the proposed framework lies in the great flexibility of pair copulas toward identifying multidimensional dependency structures present in load profiling data. CVMM is compared to other classical methods by using real demand measurements recorded across 2613 households in a London smart-metering trial. The superior performance of the proposed approach is demonstrated by analyzing four validity indicators. In addition, a decision tree classification module for partitioning new consumers is developed and the improved predictive performance of CVMM compared to existing methods is highlighted. Further case studies are carried out based on different loading conditions and different sets of large numbers of households to demonstrate the advantages and to test the scalability of the proposed method.
机译:住宅智能电表在许多辖区的持续部署导致了用电量数据的涌入。这些信息为供应商提供了宝贵的机会,可以更好地了解他们的客户群并设计更有效的关税结构。过去,已经提出了各种聚类方法来实现有意义的客户划分。本文提出了一种基于C-vine copulas(CVMM)的新型有限混合建模框架,用于进行消费者分类。所提出的框架的优越性在于成对系动词在识别载荷分布数据中存在的多维依存结构方面具有很大的灵活性。通过使用伦敦智能计量试验中记录的2613户家庭的实际需求测量结果,将CVMM与其他经典方法进行了比较。通过分析四个有效性指标证明了该方法的优越性能。另外,开发了用于划分新消费者的决策树分类模块,并且与现有方法相比,CVMM的预测性能得到了提高。基于不同的负载条件和不同数量的大量家庭进行了进一步的案例研究,以证明其优点并测试该方法的可扩展性。

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