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Optimal fault diagnosis strategy for complex systems considering common cause failure under epistemic uncertainty

机译:考虑常见原因失败的复杂系统的最佳故障诊断策略在认知不确定性下

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PurposeThis paper aims to deal with the problems such as epistemic uncertainty, common cause failure (CCF) and dynamic fault behaviours that arise in complex systems and develop an effective fault diagnosis method to rapidly locate the fault when these systems fail.Design/methodology/approachFirst, a dynamic fault tree model is established to capture the dynamic failure behaviours and linguistic term sets are used to obtain the failure rate of components in complex systems to deal with the epistemic uncertainty. Second, a beta factor model is used to construct a dynamic evidence network model to handle CCF and some parameters obtained by reliability analysis are used to build the fault diagnosis decision table. Finally, an improved Vlsekriterijumska Optimizacija I Kompromisno Resenje algorithm is developed to obtain the optimal diagnosis sequence, which can locate the fault quickly, reduce the maintenance cost and improve the diagnosis efficiency.FindingsIn this paper, a new optimal fault diagnosis strategy of complex systems considering CCF under epistemic uncertainty is presented based on reliability analysis. Dynamic evidence network is easy to carry out the quantitative analysis of dynamic fault tree. The proposed diagnosis algorithm can determine the optimal fault diagnosis sequence of complex systems and prove that CCF should not be ignored in fault diagnosis.Originality/valueThe proposed method combines the reliability theory with multiple attribute decision-making methods to improve the diagnosis efficiency.
机译:目的案件旨在处理复杂系统中出现的认识性不确定性,常见原因失败(CCF)和动态故障行为等问题,并在这些系统Fail.design/methodology/approachfirst时开发有效的故障诊断方法以快速定位故障.Design/methodology/approachFirst ,建立动态故障树模型以捕获动态故障行为,并且语言术语集用于获得复杂系统中的组件的故障率,以应对认识性不确定性。其次,β系数模型用于构建动态证据网络模型以处理CCF,并且使用可靠性分析获得的一些参数来构建故障诊断决策表。最后,开发了一种改进的vlsekriterijumska OptimizaCija i Kompromisno Resenje算法以获得最佳诊断序列,可以快速定位故障,降低维护成本,提高诊断效率。本文认为复杂系统的新优化故障诊断策略。基于可靠性分析,提出了认知不确定性下的CCF。动态证据网络易于执行动态故障树的定量分析。所提出的诊断算法可以确定复杂系统的最佳故障诊断序列,并证明CCF在故障诊断中不应忽略。偏见/ valethe所提出的方法将可靠性理论与多个属性决策方法相结合,提高了诊断效率。

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