基于改进GA-BP的车载CBTC设备故障诊断

Endong Liu, Junting Lin, Weifang Wang, Jinchuan Chai, Shuai Wang, Huadian Liang
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引用次数: 0

摘要

CBTC车载设备是保障地铁列车安全、提高运输效率的核心部件,对其故障类型进行快速有效的诊断具有重要意义。针对CBTC车辆设备故障数据的复杂性,提出了一种基于改进GA-BP神经网络模型的CBTC车辆设备智能故障诊断方法,并对CBTC系统中最关键的ATP型故障进行测试进行故障诊断。首先,采用遗传算法对BP神经网络进行优化;其次,利用粗糙集理论对atp型故障特征进行约简,降低故障特征的复杂性;与未优化的BP神经网络相比,基于改进GA-BP神经网络的故障诊断模型训练周期更短,训练均方误差仅为0.00033064,显著低于前两种神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault diagnosis of CBTC On-board equipment based on improved GA-BP
CBTC On-board equipment is a core component to ensure the safety of subway trains and improve transportation efficiency, and it is of great significance to quickly and effectively diagnose its fault types. Aiming at the complexity of the fault data of CBTC vehicle equipment, an intelligent fault diagnosis method of CBTC vehicle equipment based on the improved GA-BP neural network model is proposed, and the most critical ATP type faults in the CBTC system are tested for fault diagnosis. Firstly, the genetic algorithm is used to optimize the BP neural network; secondly, the rough set theory is used to reduce the ATP-type fault features to reduce the complexity of the fault features. Compared with the unoptimized BP neural network, the fault diagnosis model based on the improved GA-BP neural network has a shorter training period, and the mean square error of training is only 0.00033064, which is significantly lower than the first two neural networks.
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