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Detection and classification of high impedance faults in power distribution networks using ART neural networks

机译:利用ART神经网络对配电网中高阻抗故障进行检测和分类

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Adaptive Resonance Theory (ART) neural networks have several interesting properties that make them useful in the area of pattern recognition. Many different types of ART-networks have been developed to improve clustering capabilities. In this paper, five types of ART neural networks (ART1, ART2, ART2-A, Fuzzy ART and Fuzzy ARTMAP) are applied to detect and classify high impedance faults (HIF) in distribution networks. The features are extracted by applying TT-transform to one cycle of fault current signal. These features include energy, standard deviation and median absolute deviation. Then, they are applied to ART neural networks to detect and classify high impedance fault with broken conductor on gravel, asphalt and concrete, unbroken conductor on tree and also no fault condition. Finally, the results of these ART neural networks are compared with each other.
机译:自适应共振理论(ART)神经网络具有几个有趣的特性,这些特性使它们在模式识别领域中很有用。已经开发了许多不同类型的ART网络来改善群集功能。本文将五种类型的ART神经网络(ART1,ART2,ART2-A,Fuzzy ART和Fuzzy ARTMAP)用于配电网中的高阻抗故障(HIF)的检测和分类。通过将TT变换应用于故障电流信号的一个周期来提取特征。这些特征包括能量,标准偏差和中值绝对偏差。然后,将它们应用于ART神经网络,以对高阻抗故障进行检测和分类,该故障包括碎石,沥青和混凝土上的导体断裂,树上的导体未断裂以及无故障情况。最后,将这些ART神经网络的结果相互比较。

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