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Determination of Typical Electricity Load Profile by Using Double Clustering of Fuzzy C-Means and Hierarchical Method

机译:采用模糊C型均值和分层方法的双聚类确定典型电力负载曲线

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摘要

The Fuzzy C-means (FCM) and Hierarchical clustering method are widely used by many researchers in clustering data sets of electricity consumption to determine the typical consumers’ electricity load profile. FCM method clustered the data sets into several clusters by assigning the membership degree for each data while Hierarchical clustering method clusters the data sets by finding the distance between each data to find the similarity and dissimilarity of each data. This study presents the determination of typical electricity load profile by using double clustering of FCM and Hierarchical methods. Hierarchical clustering was performed as the second method after the data sets had been clustered by FCM. Cluster validation is completed by using Davies-Bouldin Index, Calinski-Harabasz Index and Silhouette Index to determine the compactness of the resulting clusters and to find the optimal number of clusters for a data collection. As a result, the number of clusters 3 is chosen as the optimal number of the cluster by using double clustering method.
机译:许多研究人员在聚类数据集中广泛使用模糊C-Means(FCM)和分层聚类方法,以确定典型的消费者电力负载轮廓。通过为每个数据分配每个数据的成员资格程度,FCM方法将数据集群集为多个群集,而通过查找每个数据之间的距离来查找每个数据的相似性和不相似性,则通过查找数据集。本研究通过使用FCM和分层方法的双重聚类来介绍典型电力负载曲线。通过FCM群集数据集之后执行分层群集作为第二种方法。通过使用Davies-Bouldin索引,CalInski-Harabasz索引和剪影索引来完成群集验证,以确定所得集群的紧凑性,并找到数据收集的最佳群集合。结果,通过使用双聚类方法选择簇3的数量作为集群的最佳数量。

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