基于不确定有序加权算子的模糊贝叶斯网络可靠性分析

Chunwei Li, Honghua Sun, Qing-yang Li, Xudong Chen
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引用次数: 1

摘要

在分析传统故障树分析方法不足的基础上,提出了一种基于故障树的模糊贝叶斯网络可靠性分析方法。该建模方法采用贝叶斯方法,用贝叶斯网络理论的节点多态性表达特征来描述复杂系统的事件多态性,用贝叶斯网络的条件概率表来描述事件之间的不确定逻辑关系。在贝叶斯模型的基础上,引入模糊集理论,用三角模糊数描述专家对事件概率的模糊评价。在权值不确定的专家评价信息中,利用不确定性排序加权平均算子计算专家权值,计算出不确定权值的专家评价信息,最终得到不同状态发生概率的准确值。将其代入贝叶斯网络,计算叶节点不同状态出现的概率,然后计算每个根节点的后验概率及其重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability Analysis of Fuzzy Bayesian Networks Based on Uncertain Ordered Weighted Operators
After analyzing the shortcomings of traditional fault tree analysis methods, a fuzzy Bayesian network reliability analysis method based on fault tree is proposed. This method of modeling uses the Bayesian method, the event polymorphism of complex systems is described by the node polymorphism expression feature of Bayesian network theory, and the uncertain logical relationship between events is described by the conditional probability table of Bayesian network. Based on the Bayesian model, the fuzzy set theory is introduced, and the experts fuzzy evaluation of event probability is described by triangular fuzzy numbers. In the evaluation information of the experts with uncertain weights, the expert evaluation information of the uncertain weights is calculated by using the uncertainty-ordered weighted average operator to calculate the expert weights, and finally the exact value of the occurrence probability of different states is obtained. Substituting it into the Bayesian network to calculate the probability of occurrence of different states of the leaf nodes, and then calculating the posterior probability of each root node and its importance.
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