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Energy and entropy-based feature extraction for locating fault on transmission lines by using neural network and wavelet packet decomposition

机译:基于能量和熵的神经网络和小波包分解的故障特征定位方法

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The aim of this paper is to estimate the fault location on transmission lines quickly and accurately. The faulty current and voltage signals obtained from a simulation are decomposed by wavelet packet transform (WPT). The extracted features are applied to artificial neural network (ANN) for estimating fault location. As data sets increase in size, their analysis become more complicated and time consuming. The energy and entropy criterion are applied to wavelet packet coefficients to decrease the size of feature vectors. The test results of ANN demonstrate that the applying of energy criterion to current signals after WPT is a very powerful and reliable method for reducing data sets in size and hence estimating fault locations on transmission lines quickly and accurately.
机译:本文的目的是快速,准确地估计传输线上的故障位置。通过小波包变换(WPT)分解从模拟获得的故障电流和电压信号。提取的特征被应用于人工神经网络(ANN)以估计故障位置。随着数据集规模的增加,其分析变得更加复杂且耗时。将能量和熵准则应用于小波包系数以减小特征向量的大小。 ANN的测试结果表明,将能量准则应用于WPT之后的电流信号是一种非常有效且可靠的方法,可以减小数据集的大小,从而快速,准确地估计传输线上的故障位置。

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