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A comprehensive evaluation of multicategory classification methods for fault classification in series compensated transmission line

机译:串联补偿输电线路故障分类的多类分类方法综合评价

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摘要

This paper presents a new method for fault classification in series-compensated transmission line using multiclass support vector machine (MCSVM) and multi class extreme learning machine (MCELM). These methods use the information obtained from the wavelet decomposition of fault current signals for fault classification. Using MATLAB simulink, data set has been generated with different types of fault and system variables, which include the fault resistance, fault distance, load angle and fault inception angle. The proposed method has been tested on a 400-kV, 300-km transmission line under variety of fault conditions. The performance of MCSVM and MCELM is compared in terms of training time and classification accuracy. The comparisons have been made for both One-Versus-One and One-Versus-Rest methods of SVMs and ELMs. Results show that MCELMs need less training time compared to MCSVMs, and the classification accuracy of MCELMs is more or less similar to MCSVMs. The feasibility of the proposed methods is also tested on a practical 220-kV series-compensated transmission line, and the results obtained are quite promising.
机译:本文提出了一种使用多类支持向量机(MCSVM)和多类极限学习机(MCELM)的串联补偿输电线路故障分类的新方法。这些方法使用从故障电流信号的小波分解获得的信息进行故障分类。使用MATLAB simulink,可以生成具有不同类型故障和系统变量的数据集,其中包括故障电阻,故障距离,负载角度和故障起始角度。在各种故障条件下,该方法已在400 kV,300 km的输电线路上进行了测试。在训练时间和分类准确性方面比较了MCSVM和MCELM的性能。已经对SVM和ELM的“一对一”和“一对一静止”方法进行了比较。结果表明,与MCSVM相比,MCELM需要更少的训练时间,并且MCELM的分类准确性与MCSVM差不多。还在实际的220 kV串联补偿输电线路上测试了所提方法的可行性,所获得的结果是很有希望的。

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