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High impedance fault detection in power distribution systems using wavelet transform and evolving neural network

机译:基于小波变换和进化神经网络的配电系统高阻抗故障检测

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This paper concerns how to apply an incremental learning algorithm based on data streams to detect high impedance faults in power distribution systems. A feature extraction method, based on a discrete wavelet transform that is combined with an evolving neural network, is used to recognize spatial-temporal patterns of electrical current data. Different wavelet families, such as Haar, Symlet, Daubechie, Coiflet and Biorthogonal, and different decomposition levels, were investigated in order to provide the most discriminative features for fault detection. The use of an evolving neural network was shown to be a quite appropriate approach to fault detection since high impedance faults is a time-varying problem. The performance of the proposed evolving system for detecting and classifying faults was compared with those of well-established computational intelligence methods: multilayer perceptron neural network, probabilistic neural network, and support vector machine. The results showed that the proposed system is efficient and robust to changes. A classification performance in the order of 99% is exhibited by all classifiers in situations where the fault patterns do not significantly change during tests. However, a performance drop of about 13-24% is exhibited by non-evolving classifiers when fault patterns suffer from gradual or abrupt change in their behavior. The evolving system is capable, after incremental learning, of maintaining its detection and classification performance even in such situations. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文涉及如何应用基于数据流的增量学习算法来检测配电系统中的高阻抗故障。一种基于离散小波变换的特征提取方法,该方法与进化的神经网络相结合,用于识别电流数据的时空模式。研究了不同的小波族,例如Haar,Symlet,Daubechie,Coiflet和Biorthogonal,以及不同的分解级别,以便为故障检测提供最具判别力的特征。由于高阻抗故障是随时间变化的问题,因此使用进化的神经网络被证明是一种非常合适的故障检测方法。将所提出的不断发展的系统进行故障检测和分类的性能与成熟的计算智能方法(多层感知器神经网络,概率神经网络和支持向量机)的性能进行了比较。结果表明,所提出的系统是高效且鲁棒的。在测试过程中故障模式没有显着变化的情况下,所有分类器都可显示约99%的分类性能。但是,当故障模式的行为逐渐或突然发生变化时,非进化分类器的性能将下降约13-24%。经过不断学习,不断发展的系统即使在这种情况下也能够保持其检测和分类性能。 (C)2017 Elsevier B.V.保留所有权利。

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