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Validation of the thermal challenge problem using Bayesian Belief Networks.
Author(s) -
John McFarland,
Laura Swiler
Publication year - 2005
Publication title -
osti oai (u.s. department of energy office of scientific and technical information)
Language(s) - English
Resource type - Reports
DOI - 10.2172/875636
Subject(s) - computer science , bayesian network , markov chain monte carlo , bayesian probability , bayes factor , context (archaeology) , testbed , machine learning , set (abstract data type) , artificial intelligence , posterior probability , bayes' theorem , metric (unit) , data mining , engineering , paleontology , computer network , operations management , biology , programming language
The thermal challenge problem has been developed at Sandia National Laboratories as a testbed for demonstrating various types of validation approaches and prediction methods. This report discusses one particular methodology to assess the validity of a computational model given experimental data. This methodology is based on Bayesian Belief Networks (BBNs) and can incorporate uncertainty in experimental measurements, in physical quantities, and model uncertainties. The approach uses the prior and posterior distributions of model output to compute a validation metric based on Bayesian hypothesis testing (a Bayes' factor). This report discusses various aspects of the BBN, specifically in the context of the thermal challenge problem. A BBN is developed for a given set of experimental data in a particular experimental configuration. The development of the BBN and the method for ''solving'' the BBN to develop the posterior distribution of model output through Monte Carlo Markov Chain sampling is discussed in detail. The use of the BBN to compute a Bayes' factor is demonstrated

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