A Bayesian Approach to Recovering Missing Component Dependence for System Reliability Prediction via Synergy Between Physics and Data

Huiru Li, Xiaoping Du
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引用次数: 1

Abstract

Predicting system reliability is often a core task in systems design. System reliability depends on component reliability and dependence of components. Component reliability can be predicted with a physics-based approach if the associated physical models are available. If the models do not exist, component reliability may be estimated from data. When both types of components coexist, their dependence is often unknown, and the component states are therefore assumed independent by the traditional method, which can result in a large error. This work proposes a new system reliability method to recover the missing component dependence, thereby leading to a more accurate estimate of the joint probability density (PDF) of all the component states. The method works for series systems whose load is shared by its components that may fail due to excessive loading. For components without physical models available, the load data are recorded upon failure, and equivalent physical models are created; the model parameters are estimated by the proposed Bayesian approach. Then models of all component states become available, and the dependence of component states, as well as their joint PDF, can be estimated. Four examples are used to evaluate the proposed method, and the results indicate that the proposed method can produce more accurate predictions of system reliability than the traditional method that assumes independent component states.
基于物理和数据协同的系统可靠性预测中缺失组件依赖恢复的贝叶斯方法
系统可靠性预测通常是系统设计的核心任务。系统的可靠性取决于组件的可靠性和组件之间的依赖性。如果相关的物理模型可用,则可以使用基于物理的方法预测组件的可靠性。如果模型不存在,则可以根据数据估计部件的可靠性。当两种组件共存时,它们之间的依赖关系往往是未知的,因此传统方法假设组件状态是独立的,这可能导致较大的误差。本文提出了一种新的系统可靠性方法来恢复缺失的组件依赖关系,从而更准确地估计所有组件状态的联合概率密度(PDF)。该方法适用于串联系统,其负载由其组件共享,可能因过载而失效。对于没有物理模型的部件,在故障时记录载荷数据,并创建等效的物理模型;采用贝叶斯方法对模型参数进行估计。然后得到所有组件状态的模型,并可以估计组件状态的依赖关系以及它们的联合PDF。通过4个算例对所提方法进行了验证,结果表明,所提方法比假设组件状态独立的传统方法能更准确地预测系统的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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