Turnout Fault Diagnosis Algorithms of Full-Electronic Interlocking System Based on BP_Adaboost

Guangwu Chen, Yijian Yu, Dongfeng Xing, Juhau Yang
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引用次数: 2

Abstract

With the rapid development of Chinese railways, railway station signal control system has developed rapidly with the help of the fourth generation of all-electronic interlocking system. According to the control circuit and switching state in switch module of electronic interlocking system and monitor switching current, analysis the monitoring machine of turnout active current, the characteristic input value of turnout is extracted and turnout fault model is established. Firstly, data training and test is classified by BP neural network, then strong classifier is constructed by optimized Adaboost, the matching classification between turnout characteristic quantity and turnout fault type is carried out. After simulation, when BP neural network algorithm is used alone, the fault diagnosis rate is 90.2%, while the strong classification effect of BP_Adaboost algorithm can improve accuracy of turnout fault diagnosis by 95.8%, and the accuracy of latter is 5% higher than that of the former. The method validity is verified, which provides important research significance for turnout fault diagnosis of all-electronic interlocking system.
基于BP_Adaboost的全电子联锁系统道岔故障诊断算法
随着我国铁路事业的迅速发展,铁路车站信号控制系统在第四代全电子联锁系统的帮助下得到了迅速发展。根据电子联锁系统开关模块的控制电路和开关状态,监测开关电流,分析了道岔有功电流监测机,提取了道岔特征输入值,建立了道岔故障模型。首先利用BP神经网络对数据进行训练和测试分类,然后利用优化后的Adaboost构建强分类器,对道岔特征量与道岔故障类型进行匹配分类。经仿真,单独使用BP神经网络算法时,故障诊断率为90.2%,而BP_Adaboost算法的分类效果较强,可将道岔故障诊断准确率提高95.8%,后者的准确率比前者提高5%。验证了该方法的有效性,为全电子联锁系统道岔故障诊断提供了重要的研究意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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