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Diagnosing with a hybrid fuzzy-Bayesian inference approach

机译:用混合模糊贝叶斯推理方法诊断

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A diagnosis based on Bayesian theory requires knowledge of the a priori and conditional probabilities of the states of the system being diagnosed. The a priori probabilities are frequently provided nowadays by the manufacturers of these systems. In turn, the probabilities of conditional observations are, as a rule, not available. The question arises as to whether and under what conditions it is possible to substitute conditional probabilities with some aggregate obtainable on the grounds of fuzzy logic. This article responds to this question by proposing a hybrid approach with novelty characteristics in both theoretical and practical terms. In the initial phase of the deliberations, it was concluded that the fundamental difference between Bayesian and fuzzy approaches is that the fuzzy approach considers the uncertainty and lack of precision of observations but overlooks the frequency of observations, and the opposite is true of the Bayesian approach. It therefore seems reasonable to seek the hybridization of both methods so that the Bayesian approach carrying the information regarding the subjective probabilities of faults can be applied in practice. To this end, it has been shown that the probability of a conditional observation can be estimated by calculating the degree of truth of the premise for that observation in the state-specific fuzzy rule. The reminder is devoted to presenting numerical and simulation examples illustrating and verifying the proposed approach.
机译:基于贝叶斯理论的诊断需要了解所诊断的系统状态的先验和条件概率。现在由这些系统的制造商频繁提供先验概率。反过来,条件观测的概率是一个规则,不可用。该问题出现了是否在什么条件下替换有条件概率,以便在模糊逻辑的基础上获得的一些聚集体。本文通过提出具有重要特征的混合方法,以理论和实践术语提出一种混合方法。在审议的初始阶段,得出的结论是,贝叶斯和模糊方法之间的根本差异是模糊方法考虑了观察的不确定性和缺乏精度,但忽略了观察频率,相反的贝叶斯方法是真实的。因此,寻求两种方法的杂交似乎合理,以便在实践中应用携带关于故障主观概率的信息的贝叶斯方法。为此,已经表明可以通过计算在状态特定模糊规则中的观察的前提的真实程度来估计条件观察的概率。提醒致力于呈现数字和仿真示例说明和验证所提出的方法。

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