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Transmission Line Fault Detection and Classification by using Wavelet MultiresolutionAnalysis: A Review

机译:通过使用小波多辨少析分析的传输线故障检测和分类:审查

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The operation of a power system is a normal operating condition under balanced three phase steady-state. This condition could be changed due to external or internal change in the power system transmission line parameters. When transmission line faults occur, a very large amount of current starts flowing in the system which may be several times of the normal operating current condition. There are so many methods to detect and classify the transmission line faults based on -Feed Forward Artificial Neural Network's approach, Fuzzy-logic, Wide area measurement technique, Wavelet Transform and ANFIS technique, wavelet- fuzzy combined approach, support vector machine and the combination of various techniques based on soft computing and wavelet transform. In the current work, an exhaustive study has been done based on SVM, wavelet transform and modern techniques.
机译:电力系统的操作是在平衡三相稳态下的正常操作条件。由于电力系统传输线参数的外部或内部变化,可以改变这种情况。当发生传输线故障时,在系统中流动的非常大量的电流开始,这可能是正常工作电流条件的几次。基于-FEED前进人工神经网络的方法,模糊逻辑,广域测量技术,小波变换和ANFIS技术,小波模糊组合方法,支持向量机和组合,存在许多方法来检测和分类传输线路故障。基于软计算和小波变换的各种技术。在目前的工作中,基于SVM,小波变换和现代技术进行了详尽的研究。

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