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dc.contributor.authorLykkegaard, MB
dc.contributor.authorDodwell, TJ
dc.contributor.authorMoxey, D
dc.date.accessioned2021-05-17T12:35:52Z
dc.date.issued2021-05-15
dc.description.abstractQuantifying the uncertainty in model parameters and output is a critical component in model-driven decision support systems for groundwater management. This paper presents a novel algorithmic approach which fuses Markov Chain Monte Carlo (MCMC) and Machine Learning methods to accelerate uncertainty quantification for groundwater flow models. We formulate the governing mathematical model as a Bayesian inverse problem, considering model parameters as a random process with an underlying probability distribution. MCMC allows us to sample from this distribution, but it comes with some limitations: it can be prohibitively expensive when dealing with costly likelihood functions, subsequent samples are often highly correlated, and the standard Metropolis-Hastings algorithm suffers from the curse of dimensionality. This paper designs a Metropolis-Hastings proposal which exploits a deep neural network (DNN) approximation of a groundwater flow model, to significantly accelerate MCMC sampling. We modify a delayed acceptance (DA) model hierarchy, whereby proposals are generated by running short subchains using an inexpensive DNN approximation, resulting in a decorrelation of subsequent fine model proposals. Using a simple adaptive error model, we estimate and correct the bias of the DNN approximation with respect to the posterior distribution on-the-fly. The approach is tested on two synthetic examples; a isotropic two-dimensional problem, and an anisotropic three-dimensional problem. The results show that the cost of uncertainty quantification can be reduced by up to 50% compared to single-level MCMC, depending on the precomputation cost and accuracy of the employed DNN.en_GB
dc.description.sponsorshipEngineering and Physical Sciences Research Council (EPSRC)en_GB
dc.description.sponsorshipTuring AI Fellowship, UKen_GB
dc.identifier.citationVol. 383, article 113895en_GB
dc.identifier.doi10.1016/j.cma.2021.113895
dc.identifier.grantnumberEP/L016214/1en_GB
dc.identifier.grantnumberEP/R029423/1en_GB
dc.identifier.grantnumber2TAFFP\100007en_GB
dc.identifier.urihttp://hdl.handle.net/10871/125704
dc.language.isoenen_GB
dc.publisherElsevieren_GB
dc.relation.urlhttp://hdl.handle.net/10871/125733en_GB
dc.rights© 2021 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/)en_GB
dc.subjectGroundwater flowen_GB
dc.subjectUncertainty quantificationen_GB
dc.subjectMarkov chain Monte Carloen_GB
dc.subjectSurrogate modelsen_GB
dc.subjectDeep neural networksen_GB
dc.titleAccelerating uncertainty quantification of groundwater flow modelling using a deep neural network proxyen_GB
dc.typeArticleen_GB
dc.date.available2021-05-17T12:35:52Z
dc.identifier.issn0045-7825
dc.descriptionThis is the final version. Available on open access from Elsevier via the DOI in this recorden_GB
dc.descriptionThe dataset associated with this article is available in ORE at: http://hdl.handle.net/10871/125733en_GB
dc.identifier.journalComputer Methods in Applied Mechanics and Engineeringen_GB
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/en_GB
dcterms.dateAccepted2021-04-26
rioxxterms.versionVoRen_GB
rioxxterms.licenseref.startdate2021-05-15
rioxxterms.typeJournal Article/Reviewen_GB
refterms.dateFCD2021-05-17T12:33:23Z
refterms.versionFCDVoR
refterms.dateFOA2021-05-17T12:36:00Z
refterms.panelBen_GB


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© 2021 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license
(http://creativecommons.org/licenses/by/4.0/)
Except where otherwise noted, this item's licence is described as © 2021 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/)