模块化动态故障树的灵敏度分析

Y. Ou, J. Dugan
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引用次数: 37

摘要

动态故障树分析为评估嵌入式计算机系统的可靠性提供了一种有效的方法,目前由Galileo软件包支持。动态故障树通过定义特殊的门来捕获顺序和功能依赖特征,从而扩展了传统的故障树。一种模块化的动态故障树求解方法有效地将二元决策图(BOD)和马尔可夫模型求解技术应用于动态故障树模型的不同部分。然而,对计算机系统的可靠性分析只能说明部分问题。后续问题如“系统中的薄弱环节在哪里?”、“如果我的输入参数发生变化,结果会如何变化?”以及“提高可靠性的最具成本效益的方法是什么?”都需要对可靠性分析进行敏感性分析。灵敏度分析(通常称为重要性分析)并不是一个新概念,但是在动态和静态故障树的模块化求解方法中,灵敏度度量的计算提出了一些有趣的问题。在本文中,我们解决了其中的几个问题,并提出了评估灵敏度的模块化技术,BOD灵敏度分析的单遍历解,估计马尔可夫模型灵敏度的简化方法,以及在系统设计中使用灵敏度度量的讨论。本文提出的二元决策图和马尔可夫方法的灵敏度度量在Galileo中实现,Galileo是一个用于复杂计算机系统可靠性分析的软件包。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitivity analysis of modular dynamic fault trees
Dynamic fault tree analysis, as currently supported by the Galileo software package, provides an effective means for assessing the reliability of embedded computer-based systems. Dynamic fault trees extend traditional fault trees by defining special gates to capture sequential and functional dependency characteristics. A modular approach to the solution of dynamic fault trees effectively applies Binary Decision Diagram (BOD) and Markov model solution techniques to different parts of the dynamic fault tree model. Reliability analysis of a computer-based system tells only part of the story, however. Follow-up questions such as "Where are the weak links in the system?", "How do the results change if my input parameters change?" and "What is the most cost effective way to improve reliability?" require a sensitivity analysis of the reliability analysis. Sensitivity analysis (often called Importance Analysis) is not a new concept, but the calculation of sensitivity measures within the modular solution methodology for dynamic and static fault trees raises some interesting issues. In this paper we address several of these issues, and present a modular technique for evaluating sensitivity, a single traversal solution to sensitivity analysis for BOD, a simplified methodology for estimating sensitivity for Markov models, and a discussion of the use of sensitivity measures in system design. The sensitivity measures for both the Binary Decision Diagram and Markov approach presented in this paper is implemented in Galileo, a software package for reliability analysis of complex computer-based systems.
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