The reduced‐order hybrid Monte Carlo sampling smoother |
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Authors: | Ahmed Attia Răzvan Ştefănescu Adrian Sandu |
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Affiliation: | Computational Science Laboratory, Virginia Polytechnic Institute and State University, Blacksburg, VA, USA |
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Abstract: | Hybrid Monte Carlo sampling smoother is a fully non‐Gaussian four‐dimensional data assimilation algorithm that works by directly sampling the posterior distribution formulated in the Bayesian framework. The smoother in its original formulation is computationally expensive owing to the intrinsic requirement of running the forward and adjoint models repeatedly. Here we present computationally efficient versions of the hybrid Monte Carlo sampling smoother based on reduced‐order approximations of the underlying model dynamics. The schemes developed herein are tested numerically using the shallow‐water equations model on Cartesian coordinates. The results reveal that the reduced‐order versions of the smoother are capable of accurately capturing the posterior probability density, while being significantly faster than the original full‐order formulation. Copyright © 2016 John Wiley & Sons, Ltd. |
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Keywords: | data assimilation Hamiltonian Monte Carlo smoothing reduced‐order modeling proper orthogonal decomposition |
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