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Synchrophasor-based data mining for power system fault analysis

机译:基于同步相量的数据挖掘用于电力系统故障分析

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摘要

Phasor measurement units can provide high resolution and synchronized power system data, which can be effectively utilized for the implementation of data mining techniques. Data mining, based on pattern recognition algorithms can be of significant help for power system analysis, as high definition data is often complex to comprehend. In this paper three pattern recognition algorithms are applied to perform the data mining tasks. The deployment is carried out firstly for fault data classification, secondly for checking which faults are occurring more frequently and thirdly for identifying the root cause of a fault by clustering the parameters behind each scenario. For such purposes three algorithms are chosen, k-Nearest Neighbor, Naïve Bayes and the k-means Clustering.
机译:相量测量单元可以提供高分辨率和同步的电力系统数据,这些数据可以有效地用于实施数据挖掘技术。基于模式识别算法的数据挖掘可为电力系统分析提供重要帮助,因为高清晰度数据通常难以理解。本文采用三种模式识别算法来执行数据挖掘任务。部署首先是为了进行故障数据分类,其次是检查哪些故障更频繁地发生,其次是通过将每个方案背后的参数聚类来确定故障的根本原因。为此,选择了三种算法:k最近邻算法,朴素贝叶斯算法和k均值聚类算法。

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