复杂系统可靠性分析的灰色贝叶斯网络模型

Yingsai Cao, Sifeng Liu, Zhigeng Fang, Wen-jie Dong
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引用次数: 4

摘要

复杂系统及其部件通常具有多种性能状态,可靠性参数通常是不确定的。基于二元结果和精确可靠性信息的建模理论缺乏足够的能力来描述上述现象。本文将灰色系统理论和贝叶斯网络应用于复杂系统的可靠性分析。首先,利用区间灰数来表示性能状态和条件概率,避免了重要可靠性信息的丢失;其次,利用贝叶斯网络推理和灰色全局优化算法,得到故障率、后验概率等可靠性特征参数的区间;然后利用区间灰数的比较规则识别出系统的易损部件和可能状态的概率,有利于复杂系统的可靠性分析和故障诊断。最后,以民用飞机液压系统为例进行了研究,结果表明该方法对多状态和不确定系统的可靠性建模和分析是有效和方便的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grey Bayesian network model for reliability analysis of complex system
Complex systems and their components usually have various performance states and the reliability parameters are normally uncertain. Modeling theories that are developed on the basis of binary outcomes and precise reliability information lack sufficient abilities to describe the above phenomena. In this paper, grey system theory and Bayesian network are employed to analyze the reliability of complex system. First, interval grey number is applied to represent the performance state as well as the conditional probability, which can avoid the loss of important reliability information. Second, the intervals of reliability characteristic parameters such as fault rate and posterior probability are obtained with Bayesian network inference and grey global optimization algorithm. Afterwards, vulnerable components and probabilities of possible states can be identified by using comparison rules of interval grey numbers, which is conducive to reliability analysis and fault diagnosis of complex system. Finally, a case about civil aircraft hydraulic system is studied, showing that the proposed approach is effective and convenient for reliability modelling and analysis of multi-state and uncertain systems.
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