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Distribution network fault section identification and fault location using wavelet entropy and neural networks

机译:基于小波熵和神经网络的配电网故障区间识别与故障定位

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Fault location in power system distribution networks is especially difficult because of the existence of several laterals/tap-offs in distribution networks. This implies that the calculated fault point can be wrongly estimated to be in any of the laterals. This paper proposes a new hybrid method combining Discrete Wavelet Transform (DWT) and artificial neural network (ANN) for fault section identification (FSI) and fault location (FL) in power system distribution networks. DWT was used in the analysis and extraction of the characteristic features from fault transient signals of the three phase line current measurements obtained at a single substation relaying point, rather than the double-ended approach used in the existing literature. Entropy Per Unit (EPU) indices are afterwards computed from the DWT decomposition, and are used as input to multi-layer ANN models serving as FSI classifiers and FL predictors respectively. The proposed hybrid method is tested using a benchmark IEEE 34-node test feeder. Comparisons, verification, and analysis made using the experimental results obtained from the application of the method showed very good performance for different fault types, fault locations, fault inception angles, and fault resistances. The proposed hybrid method is unique because of the pre-processing stage done with the DWT-EPU indices, the use of only line current measurements from a single relaying point, and the division of the FSI and FL tasks into sub-problems with respective ANN models. (C) 2016 Elsevier B.V. All rights reserved.
机译:由于配电网络中存在多个横向/分流,因此在电力系统配电网络中进行故障定位特别困难。这意味着计算出的断点可能被错误地估计为在任何支管中。提出了一种结合离散小波变换(DWT)和人工神经网络(ANN)的电力系统配电网故障区间识别(FSI)和故障定位(FL)的混合方法。 DWT被用于分析和提取在单个变电站中继点获得的三相线路电流测量的故障瞬态信号的特征,而不是现有文献中使用的双端方法。然后,根据DWT分解计算出单位熵(EPU)索引,并将其用作分别用作FSI分类​​器和FL预测器的多层ANN模型的输入。使用基准IEEE 34节点测试馈送器对提出的混合方法进行了测试。使用该方法的应用获得的实验结果进行的比较,验证和分析显示,对于不同的故障类型,故障位置,故障起始角度和故障电阻,其性能都非常好。由于使用DWT-EPU索引进行预处理,仅使用来自单个中继点的线路电流测量以及将FSI和FL任务划分为具有相应ANN的子问题,因此,提出的混合方法是独特的楷模。 (C)2016 Elsevier B.V.保留所有权利。

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