Combined DWT and Naive Bayes based fault classifier for protection of double circuit transmission line

Anamika Yadav, A. Swetapadma
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引用次数: 7

Abstract

This paper describes combined discrete wavelet transform (DWT) and Naive Bayes (NB) fault classifier for protection of double circuit transmission line. Three phase currents of both circuits and zero sequence current are given as input to the NB network for classification of fault. Inputs are pre-processed using approximate coefficient of DWT. NB classifier uses Gaussian distribution function for classification. Seven classifiers are designed for fault classification for each phase A1, B1, C1, A2, B2, C2 and ground G. Advantage of using Naive Bayes classifier is that it take few seconds for training no matter how big the data is. Different cases of fault are studied like phase faults, phase to ground faults, inter-circuit faults, cross country faults, fault near boundaries, different fault location, different inception angle and different fault resistance with high fault resistance. Accuracy of the proposed method is 99% and reach setting is also 99% of line length.
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结合小波变换和朴素贝叶斯的双回路输电线路故障分类器保护
将离散小波变换(DWT)与朴素贝叶斯(NB)相结合的故障分类器应用于双回路输电线路保护。将两个电路的三相电流和零序电流作为NB网络的输入,用于故障分类。输入使用DWT的近似系数进行预处理。NB分类器使用高斯分布函数进行分类。针对A1, B1, C1, A2, B2, C2和ground g各阶段设计了7个分类器进行故障分类。使用朴素贝叶斯分类器的优点是,无论数据有多大,训练时间都很短。研究了相故障、相地故障、线路间故障、跨国故障、近边界故障、不同故障位置、不同起始角度、不同故障电阻和高故障电阻等故障情况。该方法的精度为99%,到达设定为线长的99%。
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