基于动态贝叶斯故障网络的系统时变可靠性分析

Yunwen Feng, Z. Song, Cheng Lu, Chuxiong Yin
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引用次数: 0

摘要

先验数据信息和样本数据信息是贝叶斯模型进行准确分析和预测的两个关键信息。为了使时变分析结果准确地描述可靠性随时间退化的趋势,建立了动态贝叶斯故障网络模型(DBFN)。首先,将先验信息与指数、均匀和正态概率密度分布函数相结合,基于曲线拟合计算系统的故障率;其次,利用贝叶斯网络的反向推理实现可靠性分析,从故障现象追溯到故障原因。最后进行了随时间变化的灵敏度分析,并给出了随时间变化的趋势。以舱门指示系统故障为例,结果表明,动态方法计算的故障率比静态方法计算的故障率更接近系统时变状态。该方法为系统时变可靠性分析提供了一种客观的手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Dependent Reliability Analysis of System Based on Dynamic Bayesian Fault Network
Prior and sample data information are two key information for Bayesian model to analyze and predict accurately. In order to make the time-dependent analysis results accurately describe the trend of reliability degradation with time, a Dynamic Bayesian fault network model (DBFN) is constructed. Firstly, the prior information is combined with exponential, uniform and normal probability density distribution functions to calculate the failure rate of the system based on curve fitting. Secondly, the backwards reasoning of Bayesian network is used to realize reliability analysis, which can trace the fault phenomenon to the fault cause. Finally, the time-dependent sensitivity analysis is carried out and the trend with time is given. Using the Cabin Door indication system failure as a case, the results show that the failure rate calculated by the dynamic method is closer to the time-varying state of the system than the static value. The method provides an objective means for system time-dependent reliability analysis.
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