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Cross-correlation based distance estimation of single line to ground faults using Elman back-propagation neural network

机译:基于互相关的埃尔曼反向传播神经网络的单线接地故障距离估计

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In this article a novel method for the estimation of distance of fault location for single line to ground faults using cross- correlation and Elman Back Propagation Neural Network has been presented. In this proposed work a distinctive analogy has been incorporated between the cross-correlogram obtained from a non- faulty phase and a faulty phase in electric power system and an Electrocardiogram (ECG) of human heart at normal condition. Importance is also involved to the feature extraction & ECG-fault signals analogy, otherwise the majority of the scheme may not be implemented accurately. Furthermore this proposed method alleviates the problems related with fault distances by estimating it & reduces the faulty impacts on transmission line.
机译:在本文中,提出了一种新的方法,该方法使用互相关和艾尔曼反向传播神经网络来估计单线接地故障的距离。在这项拟议的工作中,在电力系统中从无故障相和有故障相获得的互相关图与正常情况下人心的心电图(ECG)之间,已经加入了独特的类比。特征提取和ECG故障信号的类比也很重要,否则大多数方案可能无法准确实施。此外,该方法通过估计缓解了与故障距离有关的问题,并减少了对传输线的故障影响。

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