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PHYSICS-BASED COMMON CAUSE FAILURE MODELING IN PROBABILISTIC RISK ANALYSIS: A MECHANISTIC PERSPECTIVE

机译:概率风险分析中基于物理的常见原因故障建模:一种机制的观点

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The modeling of dependent failures, specifically Common Cause Failures (CCF_s), is one of the most important topics in Probabilistic Risk Analysis (PRA). Currently, CCFs are treated using parametric methods, which are based on historical failure events. Instead of utilizing these existing data-driven approaches, this paper proposes using physics-based CCF modeling which refers to the incorporation of underlying physical failure mechanisms into risk models so that the root causes of dependencies can be "explicitly" included. This requires building a theoretical foundation for the integration of Probabilistic Physics-Of-Failure (PPOF) models into PRA in a way that the interactions of failure mechanisms and, ultimately, the dependencies between the multiple component failures are depicted. To achieve this goal, this paper highlights the following methodological steps (1) modeling the individual failure mechanisms (e.g. fatigue and wear) of two dependent components, (2) applying a mechanistic approach to deterministically model the interactions of their failure mechanisms, (3) utilizing probabilistic sciences (e.g. uncertainty modeling, Bayesian analysis) in order to make the model of interactions probabilistic, and (4) developing appropriate modeling techniques to link the physics-based CCF models to the system-level PRA. The proposed approach is beneficial for (a) reducing CCF occurrence in currently operating plants and (b) modeling CCFs for plants in the design stage.
机译:相关故障的建模,尤其是“常见原因故障”(CCF_s),是概率风险分析(PRA)中最重要的主题之一。当前,CCF使用基于历史故障事件的参数方法进行处理。本文提议不使用这些现有的数据驱动方法,而建议使用基于物理学的CCF建模,即将潜在的物理故障机制纳入风险模型中,以便可以“明确地”包括依赖性的根本原因。这就要求以理论上的基础将故障概率物理(PPOF)模型集成到PRA中,从而描述故障机制之间的相互作用,并最终描述多个组件故障之间的依存关系。为了实现这一目标,本文重点介绍了以下方法步骤(1)对两个相关组件的单个故障机制(例如疲劳和磨损)进行建模,(2)应用机械方法确定性地对其故障机制的相互作用进行建模,(3 )利用概率科学(例如不确定性建模,贝叶斯分析)以使交互模型具有概率性;以及(4)开发适当的建模技术以将基于物理学的CCF模型链接到系统级PRA。所提出的方法有益于(a)减少当前运行的工厂中CCF的发生,以及(b)在设计阶段为工厂的CCF建模。

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