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A Dynamic Risk Assessment Methodology for Maintenance Decision Support

机译:维修决策支持的动态风险评估方法

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The failure mode and effect analysis (FMEA) is a widely applied technique for prioritizing equipment failures in the maintenance decision-making domain. Recent improvements on the FMEA have largely focussed on addressing the shortcomings of the conventional FMEA of which the risk priority number is incorporated as a measure for prioritizing failure modes. In this regard, considerable research effort has been directed towards addressing uncertainties associated with the risk priority number metrics, that is occurrence, severity and detection. Despite these improvements, assigning these metrics remains largely subjective and mostly relies on expert elicitations, more so in instances where empirical data are sparse. Moreover, the FMEA results remain static and are seldom updated with the availability of new failure information. In this paper, a dynamic risk assessment methodology is proposed and based on the hierarchical Bayes theory. In the methodology, posterior distribution functions are derived for risk metrics associated with equipment failure of which the posterior function combines both prior functions elicited from experts and observed evidences based on empirical data. Thereafter, the posterior functions are incorporated as input to a Monte Carlo simulation model from which the expected cost of failure is generated and failure modes prioritized on this basis. A decision scheme for selecting appropriate maintenance strategy is proposed, and its applicability is demonstrated in the case study of thermal power plant equipment failures. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:故障模式和影响分析(FMEA)是在维护决策领域对设备故障进行优先级排序的一种广泛应用的技术。 FMEA的最新改进主要集中于解决传统FMEA的缺点,在传统FMEA中,风险优先级数字已作为衡量故障模式优先级的措施。在这方面,已经进行了大量的研究工作来解决与风险优先级数度量相关的不确定性,即发生,严重性和检测。尽管有这些改进,但分配这些度量标准仍然在很大程度上是主观的,并且主要取决于专家的启发,在经验数据稀疏的情况下更是如此。而且,FMEA结果保持不变,并且很少利用新的故障信息进行更新。本文提出了一种基于层次贝叶斯理论的动态风险评估方法。在该方法中,针对与设备故障相关的风险度量推导出后验分布函数,其中后验函数结合了专家得出的先验函数和基于经验数据的观察证据。此后,将后验函数作为蒙特卡洛仿真模型的输入,从中生成预期的故障成本并在此基础上确定故障模式的优先级。提出了选择适当维护策略的决策方案,并在火电厂设备故障案例研究中证明了其适用性。版权所有(c)2016 John Wiley&Sons,Ltd.

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