This study reports on two strategies for accelerating posterior inference of a highly parameterized and CPU-demanding groundwater flow model. Our method builds on previous stochastic collocation approaches, e.g., Marzouk and Xiu (2009) and Marzouk and Najm (2009), and uses generalized polynomial chaos (gPC) theory and dimensionality reduction to emulate the output of a large-scale groundwater flow model. The resulting surrogate model is CPU efficient and serves to explore the posterior distribution at a much lower computational cost using two-stage MCMC simulation. The case study reported in this paper demonstrates a two to five times speed-up in sampling efficiency.status: publishe
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
This study presents a novel strategy for accelerating posterior exploration of highly parameterized ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe data...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We examine a variety of polynomial-chaos-motivated approximations to a stochastic form of a steady s...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We examine a variety of polynomial-chaos-motivated approximations to a stochastic form of a steady s...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
This study presents a novel strategy for accelerating posterior exploration of highly parameterized ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe data...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We examine a variety of polynomial-chaos-motivated approximations to a stochastic form of a steady s...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We examine a variety of polynomial-chaos-motivated approximations to a stochastic form of a steady s...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
For strongly non-linear and high-dimensional inverse problems, Markov chain Monte Carlo (MCMC) metho...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
We explore the ability of the greedy algorithm to serve as an effective tool for the construction of...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...
textSubsurface flow phenomena characterize many important societal issues in energy and the environm...