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Uncertainty analysis in reliability modeling

机译:可靠性建模中的不确定性分析

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摘要

In reliability analysis of computer systems, models such as fault trees, Markov chains, and stochastic Petri nets (SPN) are built to evaluate or predict the reliability of the system. In general, the parameters in these models are usually obtained from field data, or by the data from systems with similar functionality, or even by guessing. In this paper, we address the parameter uncertainty problem. First, we review and classify three ways to describe the parameter uncertainty in the model: reliability bounds, confidence intervals, and probability distributions. Second, by utilizing the second-order approximation and the normal approximation, we propose an analytic method to derive the confidence interval of the system reliability from the confidence intervals of parameters in the transient solution of Markov models. Then, we study the Monte Carlo simulation method to derive the uncertainty in the system reliability, and use it to validate our proposed analytic method. Our effort makes the reliability prediction more realistic compared with the result without the uncertainty analysis.
机译:在计算机系统的可靠性分析中,建立了诸如故障树,马尔可夫链和随机Petri网(SPN)之类的模型来评估或预测系统的可靠性。通常,这些模型中的参数通常是从现场数据或具有类似功能的系统的数据甚至是猜测中获得的。在本文中,我们解决了参数不确定性问题。首先,我们回顾和分类描述模型中参数不确定性的三种方法:可靠性范围,置信区间和概率分布。其次,利用二阶逼近和正态逼近,提出了一种解析方法,用于从马尔可夫模型的瞬态解中的参数置信区间推导系统可靠性的置信区间。然后,我们研究了蒙特卡罗模拟方法来推导系统可靠性中的不确定性,并将其用于验证我们提出的分析方法。与不进行不确定性分析的结果相比,我们的努力使可靠性预测更加现实。

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