Bayesian analysis of multifidelity computer models with local features and non-nested experimental designs: Application to the WRF model
收藏Taylor & Francis Group2021-09-29 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Bayesian_analysis_of_multifidelity_computer_models_with_local_features_and_non-nested_experimental_designs_Application_to_the_WRF_model/13341474/1
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Motivated by a multi-fidelity Weather Research and Forecasting (WRF) climate model application where the available simulations are not generated based on hierarchically nested experimental design, we develop a new co-kriging procedure called Augmented Bayesian Treed Co-Kriging. The proposed procedure extends the scope of co-kriging in two major ways. We introduce a binary treed partition latent process in the multifidelity setting to account for non-stationary and potential discontinuities in the model outputs at different fidelity levels. Moreover, we introduce an efficient imputation mechanism which allows the practical implementation of co-kriging when the experimental design is non-hierarchically nested by enabling the specification of semi-conjugate priors. Our imputation strategy allows the design of an efficient RJ-MCMC implementation that involves collapsed blocks and direct simulation from conditional distributions. We develop the Monte Carlo recursive emulator which provides a Monte Carlo proxy for the full predictive distribution of the model output at each fidelity level, in a computationally feasible manner. The performance of our method is demonstrated on benchmark examples and used for the analysis of a large-scale climate modeling application which involves the WRF model. <i>Supplementary materials are available online.</i>
提供机构:
Konomi, Bledar A.; Karagiannis, Georgios
创建时间:
2020-12-07



