Lightning Fault Classification for Transmission Line Using Support Vector Machine

S. H. Asman, N. F. Aziz, M. Kadir, U. Amirulddin, Nurzanariah Roslan, A. Elsanabary
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Abstract

Transmission lines are susceptible to a variety of phenomena that can cause system faults. The most prevalent cause of faults in the power system is lightning strikes, while other causes may include insulator failure, tree or crane encroachment. In this study, two machine learning algorithms, Support Vector Machine (SVM) and k-Nearest Neighbor (kNN), were used and compared to classify faults due to lightning strikes, insulator failure, tree and crane encroachment. The input variables for the models were based on the root mean square (RMS) current duration, voltage dip, and energy wavelet measured at the sending end of a line. The proposed method was implemented in the MATLAB/SIMULINK programming platform. The classification performance of the developed algorithms was evaluated using confusion matrix. Overall, SVM algorithm performed better than k-NN in terms of classification accuracy, achieving a value of 97.10% compared to k-NN’s 70.60%. Moreover, SVM also outperformed k-NN in terms of computational time, with time taken by SVM is 3.63 s compared to 10.06 s by k-NN.
基于支持向量机的输电线路雷电故障分类
输电线路容易受到各种可能导致系统故障的现象的影响。电力系统中最常见的故障原因是雷击,而其他原因可能包括绝缘子故障,树木或起重机侵入。本研究采用支持向量机(SVM)和k-最近邻(kNN)两种机器学习算法对雷击、绝缘子失效、树木和起重机侵入等故障进行分类,并进行比较。模型的输入变量基于在线路发送端测量到的均方根(RMS)电流持续时间、电压下降和能量小波。在MATLAB/SIMULINK编程平台上实现了该方法。利用混淆矩阵对所开发算法的分类性能进行了评价。总体而言,SVM算法在分类准确率上优于k-NN,达到97.10%,k-NN为70.60%。此外,SVM的计算时间也优于k-NN, SVM的计算时间为3.63 s,而k-NN的计算时间为10.06 s。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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