A comparative Study Between Electrical and Morphological Features for Short-Circuit Faults Detection and Discrimination in Power Grid Lines

Hendel Mounia
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引用次数: 1

Abstract

This paper outlines the adopted methodology to construct an intelligent system, which is able to detect and to discriminate between short circuit faults in high voltage power lines (220 kV, 50 Hz) with a length of 300 km. Based on the current study, two approaches for feature extraction are presented and compared. Firstly, the voltage and current signals are decomposed into 20 ms segments, and two distinct sets of descriptors are then calculated; The first one, consists on a set of 102 morphological, and the second one, consists on a set of 12 electrical parameters. Finally, two direct probabilistic multiclass support vector machines (M-SVM) are trained separately to discriminate between 10 short-circuit faults plus a normal case, each of them receives as inputs one of the previously calculated sets.The study shows that the obtained results are very satisfactory, however, the M-SVM presents higher accuracy when it’s trained by morphological parameters; with a classification rates of 96.74% and 91.23% for the first and second method respectively
电学特征与形态学特征在电网线路短路故障检测与判别中的比较研究
本文概述了在300公里长的高压输电线路(220千伏,50赫兹)中实现短路故障检测和判别的智能系统的构建方法。在现有研究的基础上,提出并比较了两种特征提取方法。首先,将电压和电流信号分解为20ms段,然后计算两组不同的描述符;第一个由102个形态学参数组成,第二个由12个电参数组成。最后,分别训练两个直接概率多类支持向量机(M-SVM)来区分10个短路故障和一个正常情况,每一个都接收一个先前计算的集合作为输入。研究表明,M-SVM在形态学参数训练下具有较高的准确率;第一种和第二种方法的分类率分别为96.74%和91.23%
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