基于k均值聚类算法的电压暂降数据挖掘与模式识别

R. Duan, F. H. Wang, J. Zhang, R. Huang, X. Zhang
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引用次数: 11

摘要

随着人们对电力需求的不断提高,电能质量特别是电压骤降问题越来越受到人们的关注。本文提出了一种基于k均值聚类分析算法对深圳大电网实测历史数据进行电压暂降分类识别的方法。首先计算分布图中不同凹陷事件之间的距离。当某些距离较近时,可以设置一个称为质心的群集中心来表示这些事件。然后基于迭代更新方法确定质心数量和位置。这些质心所反映的电压暂降幅度和持续时间可以看作是同类变电站的电压暂降特征,可以代表整个电力系统的运行状况,找出整个电力系统的薄弱环节。该算法将复杂无序的暂降事件转化为典型的暂降模型,为简化电压暂降分析和实际管理提供了理论依据。
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Data mining & pattern recognition of voltage sag based on K-means clustering algorithm
With the increasing demands of power supply, the electric power quality especially the voltage sag deserves more concerns. This paper presents an approach of K-means clustering analysis algorithm to classify and recognize the voltage sag from the measured historical data of large-scale grid in Shenzhen, China. The distances among different sag incidents in distribution diagram are calculated first. When some distances are nearer, a cluster center which is called centroid can be set to represent these incidents. Then the centroid amounts and locations are determined based on iterative updating method. The sag amplitude and duration time reflected by these centroids can be regarded as the voltage sag characteristics of similar substations, which will represent the operation condition and find out the weak link of whole power systems. Thus the algorithm converts the complicated and disordered sag incidents into some typical sag models, which provides the theoretical evidence for simplifying analysis and practical management of voltage sags.
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