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BP Neural Network Based Fault Diagnosis in Vehicle Braking Control System

机译:基于BP神经网络的车辆制动控制系统故障诊断

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W232 the popularity of the high-speed railway in China, its operation safety issues has been attracting more and more attention nowadays. How to improve the high-speed railway reliability has become an emerging research focus. This paper investigated the fault diagnosis in vehicle braking control system, which is a core subsystem of EMU (electric multiple unit). To diagnosis the sensor fault in braking control system, back propagation (BP) neural network based method with two different learning approaches were utilized and compared. Test results based on raw data collected from EMU experimental platform showed that both approaches can accurately diagnose the faults, while the moment based learning approach provided a faster outcome compared with conventional gradient descent approach.
机译:W232中国高速铁路的普及,其运营安全问题一直在吸引越来越多的关注。如何提高高速铁路可靠性已成为新兴的研究重点。本文调查了车辆制动控制系统的故障诊断,这是EMU的核心子系统(电动多单元)。为了诊断制动控制系统中的传感器故障,利用和比较了两种不同学习方法的基于后传播(BP)神经网络的方法。基于来自EMU实验平台收集的原始数据的测试结果表明,两种方法都可以准确地诊断故障,而基于时刻的学习方法与传统的梯度下降方法相比提供了更快的结果。

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