利用重要性测度有效处理系统可靠性分析中的不确定性

H. Aliee, Faramarz Khosravi, J. Teich
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引用次数: 1

摘要

当今电子产品的可靠性受到越来越多的故障和老化影响的影响。本文研究了一种有效推导系统可靠性不确定性分布的方法。我们假设一个系统是由不可靠的组件组成的,这些组件的可靠性被建模为概率分布。现有的基于蒙特卡罗(MC)模拟的技术,迭代地从组件的概率分布中选择样本,通常存在执行时间长和/或样本空间覆盖率低的问题。为了避免在MC仿真过程中对系统可靠性进行昂贵的重新评估,我们建议采用系统可靠性函数的泰勒展开。此外,我们提出了一种分层抽样技术,该技术基于这样一个事实,即组件对其系统不确定性的贡献(或重要性)可能不相等。该技术对高/低贡献分量的概率分布进行精细/粗略的分层。实验结果表明,与已有的方法相比,该方法具有更高的效率和更精确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Treatment of Uncertainty in System Reliability Analysis using Importance Measures
The reliability of today's electronic products suffers from a growing variability of failure and ageing effects. In this paper, we investigate a technique for the efficient derivation of uncertainty distributions of system reliability. We assume that a system is composed of unreliable components whose reliabilities are modeled as probability distributions. Existing Monte Carlo (MC) simulation-based techniques, which iteratively select a sample from the probability distributions of the components, often suffer from high execution time and/or poor coverage of the sample space. To avoid the costly re-evaluation of a system reliability during MC simulation, we propose to employ the Taylor expansion of the system reliability function. Moreover, we propose a stratified sampling technique which is based on the fact that the contribution (or importance) of the components on the uncertainty of their system may not be equivalent. This technique finely/coarsely stratifies the probability distribution of the components with high/low contribution. The experimental results show that the proposed technique is more efficient and provides more accurate results compared to previously proposed techniques.
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