Journal Article10.1016/J.RESS.2015.01.023
Integration of model verification, validation, and calibration for uncertainty quantification in engineering systems
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TL;DR: A Bayesian methodology to integrate model verification, validation, and calibration activities for the purpose of overall uncertainty quantification in different types of engineering systems and is illustrated with numerical examples that deal with heat conduction and structural dynamics.
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About: This article is published in Reliability Engineering & System Safety. The article was published on 01 Jun 2015. The article focuses on the topics: Verification and validation of computer simulation models & Variable-order Bayesian network.
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