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Data-driven model for maintenance decision support : A case study of railway signalling systems

机译:维护决策支持的数据驱动模型:以铁路信号系统为例

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摘要

Signalling systems ensure the safe operation of the railway network. Their reliability and maintainability directly affect the capacity and availability of the railway network, in terms of both infrastructure and trains, as a line cannot be fully operative until a failure has been repaired. The purpose of this paper is to propose a data-driven decision support model which integrates the various parameters of corrective maintenance data and to study maintenance performance by considering different RAMS parameters. This model is based on failure analysis of historical events in the form of corrective maintenance actions. It has been validated in a case study of railway signalling systems and the results are summarised. The model allows the creation of maintenance policies based on failure characteristics, as it integrates the information recorded in the various parameters of the corrective maintenance work orders. The model shows how the different failures affect the dependability of the system: the critical failures indicate the reliability of the system, the corrective actions give information about the maintainability of the components, and the relationship between the corrective maintenance times measures the efficiency of the corrective maintenance actions. All this information can be used to plan new strategies of preventive maintenance and failure diagnostics, reduce the corrective maintenance, and improve the maintenance performance.
机译:信号系统确保铁路网络的安全运行。它们的可靠性和可维护性直接影响铁路网络的容量和可用性(就基础设施和火车而言),因为只有在修复故障后,线路才能完全正常运转。本文的目的是提出一个数据驱动的决策支持模型,该模型集成了纠正性维护数据的各种参数,并通过考虑不同的RAMS参数来研究维护性能。该模型基于对历史事件的故障分析,采取纠正性维护措施的形式。已经在铁路信号系统的案例研究中对此进行了验证,并对结果进行了总结。该模型允许基于故障特征创建维护策略,因为该模型集成了纠正性维护工作订单的各个参数中记录的信息。该模型显示了不同的故障如何影响系统的可靠性:关键故障表明了系统的可靠性,纠正措施提供了有关组件可维护性的信息,纠正性维护时间之间的关系衡量了纠正性的效率维护措施。所有这些信息可用于计划预防性维护和故障诊断的新策略,减少纠正性维护并提高维护性能。

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