Hybrid nested sampling algorithm for Bayesian model selection applied to inverse subsurface flow problems
Type
ArticleKAUST Department
Earth Fluid Modeling and Prediction GroupEarth Science and Engineering Program
Environmental Science and Engineering Program
Physical Science and Engineering (PSE) Division
Date
2014-02Permanent link to this record
http://hdl.handle.net/10754/563365
Metadata
Show full item recordAbstract
A Hybrid Nested Sampling (HNS) algorithm is proposed for efficient Bayesian model calibration and prior model selection. The proposed algorithm combines, Nested Sampling (NS) algorithm, Hybrid Monte Carlo (HMC) sampling and gradient estimation using Stochastic Ensemble Method (SEM). NS is an efficient sampling algorithm that can be used for Bayesian calibration and estimating the Bayesian evidence for prior model selection. Nested sampling has the advantage of computational feasibility. Within the nested sampling algorithm, a constrained sampling step is performed. For this step, we utilize HMC to reduce the correlation between successive sampled states. HMC relies on the gradient of the logarithm of the posterior distribution, which we estimate using a stochastic ensemble method based on an ensemble of directional derivatives. SEM only requires forward model runs and the simulator is then used as a black box and no adjoint code is needed. The developed HNS algorithm is successfully applied for Bayesian calibration and prior model selection of several nonlinear subsurface flow problems. © 2013 Elsevier Inc.Citation
Elsheikh, A. H., Wheeler, M. F., & Hoteit, I. (2014). Hybrid nested sampling algorithm for Bayesian model selection applied to inverse subsurface flow problems. Journal of Computational Physics, 258, 319–337. doi:10.1016/j.jcp.2013.10.001Publisher
Elsevier BVJournal
Journal of Computational Physicsae974a485f413a2113503eed53cd6c53
10.1016/j.jcp.2013.10.001