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Distribution network fault section identification and fault location using artificial neural network

机译:人工神经网络的配电网故障区间识别与故障定位

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In this paper, a method for fault location in power distribution network is presented. The proposed method uses artificial neural network. In order to train the neural network, a series of specific characteristic are extracted from the recorded fault signals in relay. These characteristics are obtained by wavelet transform on three-phase currents and sequences and extracting the high frequency characteristic. Since high frequencies are generated during the occurrence of the fault, signal information could be extracted using wavelet transform. After wavelet transform, the entropies of the minor components of the sequences as well as three-phase signals could be obtained using statistics to extract the hidden features inside them and present them separately to train the neural network. Also, since the obtained inputs for the training of the neural network strongly depend on the fault angle, fault resistance, and fault location, the training data should be selected such that these differences are properly presented so that the neural network does not face any issues for identification. Therefore, selecting the signal processing function, data spectrum and subsequently, statistical parameters and their combinations are very important. Finally, one could estimate the fault section, fault location, and fault resistance after implementing the neural network. The simulation results show the good performance of neural network for the faults in different angles, locations, and resistances.
机译:本文提出了一种配电网故障定位方法。所提出的方法使用人工神经网络。为了训练神经网络,从继电器中记录的故障信号中提取出一系列特定的特征。这些特性是通过对三相电流和序列进行小波变换并提取高频特性来获得的。由于在故障发生期间会产生高频,因此可以使用小波变换提取信号信息。经过小波变换后,可以使用统计信息提取序列中次要分量的熵以及三相信号的熵,以提取其中的隐藏特征并将它们单独呈现以训练神经网络。同样,由于获得的用于训练神经网络的输入很大程度上取决于故障角度,故障电阻和故障位置,因此应该选择训练数据,以便正确呈现这些差异,从而使神经网络不会遇到任何问题。用于识别。因此,选择信号处理功能,数据频谱以及随后的统计参数及其组合非常重要。最后,在实现神经网络后,可以估计故障区域,故障位置和故障抵抗力。仿真结果表明,对于不同角度,不同位置和不同电阻的故障,神经网络均具有良好的性能。

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