用蒙特卡罗方法估计多状态分量的重要性测度

E. Zio, L. Podofillini
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引用次数: 18

摘要

作者在之前的一篇论文中提出了一些常用的重要性度量的概括,以表征多状态组件达到给定性能水平对整体多状态系统性能的重要性。度量的定义基于组件达到最多或至少给定性能水平的条件概率。本文提出了一种新的蒙特卡罗方法,该方法允许在单个模拟中估计实现给定性能水平的各种组件的重要性。这是通过适当设计计数器来实现的,当所有组件都达到所有可达到的性能水平时,计数器可以同时评估系统性能,当组件被限制为最多或至少具有给定的性能水平时,计数器可以评估系统性能。利用蒙特卡罗方法的灵活性来考虑并行组件之间的负载共享依赖关系。在一个文献多状态传输系统中对该方法进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Monte Carlo approach to the estimation of importance measures of multi-state components
A generalization of some frequently used importance measures has been proposed by the authors in a previous paper to characterize the importance that a multi-state component achieves a given level of performance for the overall multi-state system performance. The definitions of the measures are based on the conditional probabilities that a component reaches at most or at least a given level of performance. The present paper proposes a new Monte Carlo approach which allows estimating in a single simulation the importance of the various components achieving given levels of performance. This is done by means of properly devised counters for the simultaneous estimation of the system performance when all of the components evolve through all of their reachable performance levels, and of the system performance when the components are restricted to have at most or at least a given level of performance. The flexibility of the Monte Carlo method is exploited to account for the load-sharing dependencies among parallel components. The approach is tested on a sample multi-state transmission system of literature.
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