Publication | Open Access
Reliability sensitivity analysis based on a two-stage Markov chain Monte Carlo simulation
36
Citations
46
References
2022
Year
EngineeringMarkov Chain Monte CarloSystem ReliabilityReliability EngineeringUncertainty QuantificationRisk ManagementDynamic ReliabilitySystems EngineeringModeling And SimulationSpecial Mcmc MethodReliability AnalysisStatisticsReliabilityComputer EngineeringReliability PredictionReliability ModellingReliability Sensitivity IndexTwo-stage Mcmc MethodReliability Sensitivity AnalysisFailure Prediction
The reliability sensitivity index based on the safety/failure classification of model predictions is a valuable tool to measure how uncertain parameters affect the failure of engineering systems. The key to estimate this index is to estimate the failure-conditional probability density function (PDF) of parameters, which can be regarded as a posterior PDF from the perspective of Bayesian inference. Due to the binary property of the failure indicator function, it is difficult to directly sample the failure-conditional PDF. In this work, a new efficient sampling method is proposed to estimate the failure-conditional PDF and the reliability sensitivity index through a two-stage Markov chain Monte Carlo (MCMC) simulation. In the first stage, a different criterion based on the distance to the failure domain is adopted to update the chain and finally get a first sample in the failure domain. Then, starting with this sample, a normal Markov chain is run in the second stage to simulate the failure-conditional PDF and estimate the reliability sensitivity index. The preconditioned Crank-Nicolson algorithm (a special MCMC method) is adopted to deal with high-dimensional problems (with many uncertain parameters), and adaptive parameter tuning is used to enhance the performance of the proposed two-stage MCMC method. Several test examples show the high efficiency of the proposed two-stage MCMC method compared to subset simulation. The method is currently designed for problems with a single failure domain, yet it could be extended.
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