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An implicit method for probabilistic common-cause failure analysis using Bayesian Network

机译:贝叶斯网络的概率常见原因失效分析的隐含方法

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A probabilistic common-cause failure (PCCF) is any condition or event that causes multiple components fail or malfunction simultaneously with different occurrence probabilities. A system subject to PCCFs is sometimes affected by multiple common causes (CCs) whose relationship may be very complex. This paper proposes an implicit method to model systems subject to PCCFs using Bayesian Network (BN). Three kinds of relationships between CCs are considered: s-independence, s-dependence or mutually exclusion. The proposed method has no limitation on the type of failure distributions of system components. Finally, the proposed method is illustrated by an example computer system.
机译:概率常见的常见原因失败(PCCF)是导致多个组件的任何条件或事件,同时具有不同的发生概率。受PCCF的系统有时受到多个常见原因(CCS)的影响,其关系可能非常复杂。本文提出了使用贝叶斯网络(BN)对PCCF进行模拟系统的隐含方法。考虑了CCS之间的三种关系:S独立,S依赖或相互排除。该方法对系统组件的故障分布的类型没有限制。最后,通过示例计算机系统示出了所提出的方法。

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