Bayesian methods for evaluating discrete reliability growth

J. Hall, A. Mosleh
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引用次数: 1

Abstract

Bayesian estimation procedures are derived herein that may be utilized to evaluate reliability growth of discrete systems, such as guns, rockets, missile systems, torpedoes, etc. One of the advantages of these Bayesian procedures is that they directly quantify the epistemic uncertainties in model parameters (i.e., the shape parameters of the beta distribution), as well as six reliability growth metrics of basic interest to program management. These metrics include: (1) the initial system reliability; (2) the projected reliability following failure mode mitigation; (3) reliability growth potential (i.e., the theoretical upper-limit on reliability achieved by finding and fixing all failure modes via a specified level of fix effectiveness); (4) the expected number of failure modes observed during testing; (5) the probability of observing a new failure mode; and (6) the fraction of the initial system probability of failure associated with failure modes for which program management is aware. These metrics [18] give reliability practitioners the means to estimate the reliability of discrete systems undergoing development, address model goodness-of-fit concerns, quantify programmatic risk, and assess system maturity. Analytical results are presented to obtain Bayes' estimates of the beta shape parameters under a delayed corrective action strategy (i.e., when corrective actions are installed on system prototypes at the end of the current test phase). A Monte Carlo simulation approach is given for constructing uncertainty distributions on each of the aforementioned reliability growth management metrics. Bayesian probability limits for inference on interval estimation are obtained in the usual manner (i.e., via desired percentiles of the uncertainty distributions). These uncertainty distributions are found to be approximated very well by beta and/or Gaussian random variables. These methods are illustrated by simple numerical examples. In particular Bayes' estimates the beta shape parameters are obtained from a small dataset, and compared against the true parameter values. Bayesian epistemic uncertainty distributions are also constructed for the reliability growth management metrics via the proposed Monte Carlo approach. This methodology is useful to program managers and reliability practitioners that wish to quantitatively assess the reliability growth program of one-shot systems developed under a delayed corrective action strategy.
离散可靠性增长评估的贝叶斯方法
本文导出的贝叶斯估计程序可用于评估离散系统的可靠性增长,如火炮、火箭、导弹系统、鱼雷等。这些贝叶斯过程的优点之一是,它们直接量化了模型参数(即beta分布的形状参数)中的认知不确定性,以及对项目管理基本感兴趣的六个可靠性增长指标。这些指标包括:(1)初始系统可靠性;(2)失效模式缓解后的预计可靠性;(3)可靠性增长潜力(即通过一定水平的修复效率找到并修复所有失效模式所达到的可靠性理论上限);(4)试验中观察到的预期失效模式数;(5)观察到新失效模式的概率;(6)初始系统故障概率与程序管理意识到的故障模式相关的比例。这些指标[18]为可靠性从业者提供了评估正在开发的离散系统的可靠性、解决模型拟合性问题、量化编程风险和评估系统成熟度的方法。给出了分析结果,以获得延迟纠正措施策略(即,在当前测试阶段结束时将纠正措施安装在系统原型上)下beta形状参数的贝叶斯估计。给出了一种蒙特卡罗模拟方法来构造上述每个可靠性增长管理指标的不确定性分布。区间估计推理的贝叶斯概率极限以通常的方式获得(即,通过不确定性分布的期望百分位数)。这些不确定性分布被发现可以很好地近似于beta和/或高斯随机变量。通过简单的数值算例说明了这些方法。特别是贝叶斯估计,贝塔形状参数是从一个小数据集获得的,并与真实参数值进行比较。采用蒙特卡罗方法构造了可靠性增长管理指标的贝叶斯认知不确定性分布。这种方法对项目经理和可靠性实践者非常有用,他们希望定量评估在延迟纠正措施策略下开发的一次性系统的可靠性增长计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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