RESIDENTIAL LOAD PROFILE ANALYSIS USING CLUSTERING STABILITY

Fang-Yi Chang, Shu-wei Lin, Chia-Wei Tsai, Po-Chun Kuo
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Abstract

Clustering is an useful tool in the data analysis to discover the natural structure in the data. The technique separates given smart meter data set into several representative clusters for the convenience of energy management. Each cluster may has its own attributes, such as energy usage time and magnitude. These attributes can help the electrical operators to manage their electrical grids with goals of energy and cost reduction. In this paper, we use principle component analysis and K-means as dimensional reduction and the reference clustering algorithm, respectively, and several choices must be considered: the number of cluster, the number of the leading principle components, and whether use normalized principle analysis schema or not. To answer these issues simultaneously, we use the stability scores as measured by dot similarity and confusion matrix as our evaluation decision. The advantage is that it is useful for comparing the performance under different decisions, and thus provides us to make these choices simultaneously.
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基于聚类稳定性的住宅负荷分布分析
聚类是数据分析中发现数据中自然结构的有用工具。该技术将给定的智能电表数据集分离为几个具有代表性的集群,以便于能源管理。每个集群可能有自己的属性,例如能源使用时间和数量。这些属性可以帮助电力运营商以降低能源和成本为目标来管理他们的电网。在本文中,我们分别使用主成分分析和K-means作为降维和参考聚类算法,并且必须考虑几个选择:聚类的数量、前导主成分的数量以及是否使用归一化主成分分析模式。为了同时回答这些问题,我们使用通过点相似性和混淆矩阵测量的稳定性分数作为我们的评估决策。其优点是,它有助于比较不同决策下的性能,从而使我们能够同时做出这些选择。
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