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Hybrid Features based K-means Clustering Algorithm for use in Electricity Customer Load Pattern Analysis

机译:基于混合特征的K均值聚类算法,用于电力用户负荷模式分析

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In the power system, the load pattern of users is important for electricity price formulation, abnormal electricity consumption detection and load forecasting. Accurately identifying the load patterns effectively improve the overall load forecasting performance of the power grid. However, due to many factors affecting the load, identifying load patterns is not a simple job. In this paper, the features of load data are extracted and different load patterns of users are identified. In the pattern classification, K-means clustering is used. In feature extraction, PCA and prior knowledge were respectively used for dimensionality reduction to extract new features in the past. Combining the advantages of PCA and prior knowledge, a new method, namely, weighted combination of the obtained features from two former methods, is adopted to extract new features and identify the user's load pattern. In the similarity measure, the variance of each feature is taken as its weight, and the clustering result is superior to that of PCA and prior knowledge. In the numerical simulation, it is found that the clustering results using the new method in this paper are better than those using only PCA to reduce dimensionality or using prior knowledge to reduce dimensionality. In the experiment, the users in a certain area were divided into four categories according to the clustering result of load data: peak electricity type, partial peak electricity type I, partial peak electricity type II and abnormal electricity type.
机译:在电力系统中,用户的负载模式对于电价制定,异常用电量检测和负载预测至关重要。准确识别负载模式可有效提高电网的总体负载预测性能。但是,由于许多因素会影响负载,因此识别负载模式并不是一件容易的事。本文提取了负荷数据的特征,并识别了用户的不同负荷模式。在模式分类中,使用K均值聚类。在特征提取中,PCA和先验知识分别用于降维以提取过去的新特征。结合PCA的优势和现有知识,采用一种新方法,即从两种以前的方法中获得的特征进行加权组合,以提取新特征并识别用户的负载模式。在相似性度量中,将每个特征的方差作为其权重,并且聚类结果优于PCA和先验知识。在数值模拟中,发现使用新方法进行聚类的结果要好于仅使用PCA进行降维或使用先验知识进行降维的聚类结果。在实验中,根据负荷数据的聚类结果,将某个区域的用户分为四类:峰值用电类型,部分用电峰值I,部分用电峰值II和异常用电。

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