基于聚类算法和决策规则标记的电压暂降源定位方法

J. L. E. S. Filho, F. A. S. Borges, R. Rabêlo, Ivan Saraiva Silva
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引用次数: 1

摘要

电压暂降干扰是在电网中检测到的最明显的波形变化,因为这些事件在网络中的存在会对用户造成损害。诊断问题的第一步是确定配电系统中与引起下沉紊乱的源相连的位置。本文提出了一种基于聚类算法和决策规则相结合的方法来指出聚集原产地的区域(聚类)。聚类算法是对来自不同测量节点的电压信号数据进行分析,并将这些数据进行聚类。然后,部分决策树(PART)算法负责定义针对每个聚类特征的决策规则集,并定义哪一组聚集干扰源位置。对于聚类任务,对k-means和模糊c-means聚类算法进行了评价和比较。使用IEEE 34总线测试馈线系统对该方法进行了评估,结果表明准确率高于90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method for Voltage Sag Source Location Using Clustering Algorithm and Decision Rule Labeling
The voltage sag disturbance stands out as the most evident waveform change that is detected in electric networks, since the presence of these events in the network causes damages to the consumers. The first step in diagnosing the problem is to identify the location in the distribution system that is connected to the source causing the sinking disorder. This work presents a methodology based on clustering algorithm combined with decision rule to point out the region (cluster) that aggregates the place of origin. Clustering algorithm is responsible for analyzing the voltage signal data from different measurement nodes and separating these data into clusters. Then the Partial Decision Trees (PART) algorithm is responsible for defining the decision rule set that will confront the characteristics of each cluster and define which group aggregates the disturbance source location. For the clustering task, the k-means and fuzzy c-means clustering algorithms are evaluated and compared. The methodology was evaluated using the IEEE 34-bus test feeder system and the results show a hit rate higher than 90%.
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