Bayesian Updating with Structural Reliability Methods

Volume: 141, Issue: 3
Published: Mar 1, 2015
Abstract
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Because of the difficulties involved in computing the high-dimensional integrals necessary for Bayesian updating, Markov chain Monte Carlo (MCMC) sampling methods have been developed and successfully applied for this task. The disadvantage of MCMC methods is the difficulty of ensuring the stationarity of the Markov chain. We present an alternative to...
Paper Details
Title
Bayesian Updating with Structural Reliability Methods
Published Date
Mar 1, 2015
Volume
141
Issue
3
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