Neural network based earth fault detection and location on a fourth rail DC railway

J. Jin, J. Allan, K. Payne
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引用次数: 2

Abstract

This paper describes the application of neural networks in earth fault detection and location on a fourth rail DC railway power supply system. A multi-layer perceptron (MLP) network is used with the Leventberg-Marquardt algorithm as the training algorithm. The neural network based fault detector uses 600 Hz harmonic values of voltages and currents at the DC side of rectifiers as the inputs of the neural network. To get the training and testing data, simulations have been conducted to address different complex fault situations. Results show that the neural network based fault detector is fast and accurate. Further work, including more field tests to build on earlier limited tests, will be carried out to investigate the implementation of the neural network based detector for the fourth rail system in real life.
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基于神经网络的四轨直流铁路接地故障检测与定位
本文介绍了神经网络在四轨直流铁路供电系统接地故障检测与定位中的应用。采用多层感知器网络,采用Leventberg-Marquardt算法作为训练算法。基于神经网络的故障检测器以整流器直流侧电压和电流的600 Hz谐波值作为神经网络的输入。为了获得训练和测试数据,针对不同的复杂故障情况进行了仿真。结果表明,基于神经网络的故障检测方法快速、准确。将开展进一步的工作,包括在早期有限测试的基础上进行更多的现场测试,以研究在现实生活中第四轨道系统中基于神经网络的探测器的实施情况。
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