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Definition of MV Load Diagrams via Weighted Evidence Accumulation Clustering using Subsampling

机译:通过使用二次抽样的加权证据累积聚类定义MV负荷图

摘要

A definition of medium voltage (MV) load diagrams was made, based on the data base knowledge discovery process. Clustering techniques were used as support for the agents of the electric power retail markets to obtain specific knowledge of their customers’ consumption habits. Each customer class resulting from the clustering operation is represented by its load diagram. The Two-step clustering algorithm and the WEACS approach based on evidence accumulation (EAC) were applied to an electricity consumption data from a utility client’s database in order to form the customer’s classes and to find a set of representative consumption patterns.The WEACS approach is a clustering ensemble combination approach that uses subsampling and that weights differently the partitions in the co-association matrix. As a complementary step to the WEACS approach, all the final data partitions produced by the different variations of the method are combined and the Ward Link algorithm is used to obtain the final data partition. Experiment results showed that WEACS approach led to better accuracy than many other clustering approaches. In this paper the WEACS approach separates better the customer’s population than Two-step clustering algorithm.
机译:基于数据库知识发现过程,定义了中压(MV)负载图。聚类技术被用来支持电力零售市场的代理商,以获取有关其客户消费习惯的特定知识。集群操作产生的每个客户类别均由其负载图表示。将两步聚类算法和基于证据累积(EAC)的WEACS方法应用于公用事业客户数据库的用电量数据,以形成客户的类别并找到一组有代表性的用电量模式。一种聚类集成组合方法,该方法使用子采样并且对协关联矩阵中的分区进行加权。作为WEACS方法的补充步骤,将由该方法的不同变体产生的所有最终数据分区组合在一起,并使用Ward Link算法获得最终数据分区。实验结果表明,与许多其他聚类方法相比,WEACS方法具有更高的准确性。在本文中,WEACS方法比两步聚类算法能更好地分离客户群。

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