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Fault Diagnosis of Train Network Control Management System Based on Dynamic Fault Tree and Bayesian Network

机译:基于动态故障树和贝叶斯网络的火车网络控制管理系统故障诊断

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摘要

Train network control management system (TCMS) is an important part of the High-speed rail train. Because of the TCMS’s complex and redundant structure, long-term operation environment, etc., breakdowns inevitably in the long-time running. Based on the historical fault data of the TCMS accumulated during their online service, the working principles, failure modes, and effects analysis of TCMS are researched and the dynamic fault tree (DFT) model of TCMS failure is built. Then, the dynamic fault tree model is transformed into the Bayesian network (BN) model, which can model the reliability of such types of systems. Finally, combining DFT with BN is used for fault probability estimation and reliability assessment. The results present that increasing the reliability of key modules for the TCMS would be of great help to High-speed rail train engineers in the fault diagnosis field.
机译:火车网络控制管理系统(TCMS)是高速火车站的重要组成部分。由于TCMS的复杂和冗余结构,长期运行环境等,在长期运行中不可避免地故障。基于在在线服务期间累积的TCMS的历史故障数据,研究了TCMS的工作原理,故障模式和效果分析,构建了TCMS故障的动态故障树(DFT)模型。然后,动态故障树模型被转换为贝叶斯网络(BN)模型,可以模拟这些类型系统的可靠性。最后,将DFT与BN组合用于故障概率估计和可靠性评估。结果显示,增加TCMS的关键模块的可靠性对于故障诊断领域的高速轨道训练工程师将有很大的帮助。

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