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Classification and location of single line to ground faults in double circuit transmission lines using artificial neural networks

机译:利用人工神经网络对双回线中单线接地故障的分类和定位

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摘要

Fault detection, classification and location from the relay end in a double circuit transmission line are challenging tasks because of mutual coupling between the two circuits. In this paper, combined unsupervised and supervised neural networks-based fault detection, classification and distance location techniques are presented for a double circuit line. This technique does not require communication link to retrieve the remote end data. Zero sequence current compensation for healthy phases can also be avoided. Artificial neural network employs a reduced set of input features, i.e., the fundamental components of three phase voltages and the six phase currents of the two parallel lines at one end of the line only. The simulation results show that single phase-to-ground faults can be correctly classified and located after one cycle from the inception of fault. The complexity of the possible types of faults, fault locations, high path fault resistances, fault inception angles, mutual coupling effects and remote end in-feed do not affect the performance.
机译:由于两个电路之间的相互耦合,因此从双回路传输线中的中继端进行故障检测,分类和定位是一项艰巨的任务。本文提出了一种基于无监督和有监督的神经网络相结合的双回路线路故障检测,分类和距离定位技术。此技术不需要通信链接即可检索远程终端数据。也可以避免对健康阶段进行零序电流补偿。人工神经网络使用了一组简化的输入功能,即仅在线路一端的两条平行线路的三相电压和六相电流的基本分量。仿真结果表明,从发生故障开始的一个周期后,可以正确分类和定位单相接地故障。故障的可能类型,故障位置,高路径故障电阻,故障起始角度,互耦效应和远端馈电的复杂性不会影响性能。

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