Data-driven model reduction for the Bayesian solution of inverse problems

One of the major challenges in the Bayesian solution of inverse problems governed by partial differential equations (PDEs) is the computational cost of repeatedly evaluating numerical PDE models, as required by Markov chain Monte Carlo (MCMC) methods for posterior sampling. This paper proposes a dat...

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Bibliographic Details
Main Authors: Cui, Tiangang (Contributor), Marzouk, Youssef M. (Contributor), Willcox, Karen E. (Contributor)
Other Authors: Massachusetts Institute of Technology. Department of Aeronautics and Astronautics (Contributor)
Format: Article
Language:English
Published: Wiley Blackwell, 2015-05-13T13:27:56Z.
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Online Access:Get fulltext
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100 1 0 |a Cui, Tiangang  |e author 
100 1 0 |a Massachusetts Institute of Technology. Department of Aeronautics and Astronautics  |e contributor 
100 1 0 |a Cui, Tiangang  |e contributor 
100 1 0 |a Marzouk, Youssef M.  |e contributor 
100 1 0 |a Willcox, Karen E.  |e contributor 
700 1 0 |a Marzouk, Youssef M.  |e author 
700 1 0 |a Willcox, Karen E.  |e author 
245 0 0 |a Data-driven model reduction for the Bayesian solution of inverse problems 
260 |b Wiley Blackwell,   |c 2015-05-13T13:27:56Z. 
856 |z Get fulltext  |u http://hdl.handle.net/1721.1/96976 
520 |a One of the major challenges in the Bayesian solution of inverse problems governed by partial differential equations (PDEs) is the computational cost of repeatedly evaluating numerical PDE models, as required by Markov chain Monte Carlo (MCMC) methods for posterior sampling. This paper proposes a data-driven projection-based model reduction technique to reduce this computational cost. The proposed technique has two distinctive features. First, the model reduction strategy is tailored to inverse problems: the snapshots used to construct the reduced-order model are computed adaptively from the posterior distribution. Posterior exploration and model reduction are thus pursued simultaneously. Second, to avoid repeated evaluations of the full-scale numerical model as in a standard MCMC method, we couple the full-scale model and the reduced-order model together in the MCMC algorithm. This maintains accurate inference while reducing its overall computational cost. In numerical experiments considering steady-state flow in a porous medium, the data-driven reduced-order model achieves better accuracy than a reduced-order model constructed using the classical approach. It also improves posterior sampling efficiency by several orders of magnitude compared with a standard MCMC method. 
520 |a United States. Dept. of Energy. Office of Advanced Scientific Computing Research (Applied Mathematics Program Award DE-FG02-08ER2585) 
520 |a United States. Dept. of Energy. Office of Advanced Scientific Computing Research (Applied Mathematics Program Award DE-SC0009297) 
546 |a en_US 
655 7 |a Article 
773 |t International Journal for Numerical Methods in Engineering