首页> 外文会议>Proceedings of the Third IASTED Asian Conference on Power and Energy Systems >DETERMINATION OF ELECTRICITY CONSUMERS’ LOAD PROFILES VIA WEIGHTED EVIDENCE ACCUMULATION CLUSTERING USING SUBSAMPLING
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DETERMINATION OF ELECTRICITY CONSUMERS’ LOAD PROFILES VIA WEIGHTED EVIDENCE ACCUMULATION CLUSTERING USING SUBSAMPLING

机译:通过加权抽样聚类确定用电量,确定用电负荷

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With the electricity market liberalization, the distribution and retail companies are looking for better market strategies based on adequate information upon the consumption patterns of its electricity consumers. A fair insight on the consumers' behavior will permit the definition of specific contract aspects based on the different consumption patterns. In order to form the different consumers' classes, and find a set of representative consumption patterns we use electricity consumption data from a utility client's database and two approaches: Two-step clustering algorithm and the WEACS approach based on evidence accumulation (EAC) for combining partitions in a clustering ensemble. While EAC uses a voting mechanism to produce a co-association matrix based on the pairwise associations obtained from N partitions and where each partition has equal weight in the combination process, the WEACS approach uses subsampling and weights differently the partitions. As a complementary step to the WEACS approach, we combine the partitions obtained in the WEACS approach with the ALL clustering ensemble construction method and we use the Ward Link algorithm to obtain the final data partition. The characterization of the obtained consumers' clusters was performed using the C5.0 classification algorithm. Experiment results showed that the WEACS approach leads to better results than many other clustering approaches.
机译:随着电力市场的自由化,配电和零售公司正在根据有关电力消费者的消费模式的充分信息,寻求更好的市场策略。对消费者行为的公正了解将允许根据不同的消费模式来定义特定的合同方面。为了形成不同的消费者类别,并找到一组有代表性的用电模式,我们使用了来自公用事业客户数据库的用电量数据和两种方法:两步聚类算法和基于证据累积(EAC)的WEACS方法进行组合集群集合中的分区。虽然EAC使用表决机制基于从N个分区中获得的成对关联来生成协关联矩阵,并且每个分区在合并过程中具有相同的权重,但WEACS方法使用子采样和对分区的权重不同。作为WEACS方法的补充步骤,我们将WEACS方法中获得的分区与ALL聚类集成构建方法相结合,并使用Ward Link算法获得最终数据分区。使用C5.0分类算法对获得的消费者集群进行表征。实验结果表明,与许多其他聚类方法相比,WEACS方法可获得更好的结果。

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