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dc.contributor.authorGupta, Abhinav
dc.contributor.authorLermusiaux, Pierre F.J.
dc.date.accessioned2024-03-18T18:01:06Z
dc.date.available2024-03-18T18:01:06Z
dc.date.issued2023-08
dc.identifier.issn0079-6611
dc.identifier.urihttps://hdl.handle.net/1721.1/153817
dc.description.abstractPredictive dynamical models for marine ecosystems are used for a variety of needs. Due to sparse measurements and limited understanding of the myriad of ocean processes, there is however significant uncertainty. There is model uncertainty in the parameter values, functional forms with diverse parameterizations, level of complexity needed, and thus in the state fields. We develop a Bayesian model learning methodology that allows interpolation in the space of candidate models and discovery of new models from noisy, sparse, and indirect observations, all while estimating state fields and parameter values, as well as the joint PDFs of all learned quantities. We address the challenges of high-dimensional and multidisciplinary dynamics governed by PDEs by using state augmentation and the computationally efficient GMM-DO filter. Our innovations include stochastic formulation and complexity parameters to unify candidate models into a single general model as well as stochastic expansion parameters within piecewise function approximations to generate dense candidate model spaces. These innovations allow handling many compatible and embedded candidate models, possibly none of which are accurate, and learning elusive unknown functional forms. Our new methodology is generalizable, interpretable, and extrapolates out of the space of models to discover new ones. We perform a series of twin experiments based on flows past a ridge coupled with three-to-five component ecosystem models, including flows with chaotic advection. The probabilities of known, uncertain, and unknown model formulations, and of state fields and parameters, are updated jointly using Bayes' law. Non-Gaussian statistics, ambiguity, and biases are captured. The parameter values and model formulations that best explain the data are identified. When observations are sufficiently informative, model complexity and functions are discovered.en_US
dc.language.isoen
dc.publisherElsevier BVen_US
dc.relation.isversionof10.1016/j.pocean.2023.103050en_US
dc.rightsCreative Commons Attribution-Noncommercial-ShareAlikeen_US
dc.rights.urihttp://creativecommons.org/licenses/by-nc-sa/4.0/en_US
dc.sourcearxiven_US
dc.subjectGeologyen_US
dc.subjectAquatic Scienceen_US
dc.titleBayesian learning of coupled biogeochemical–physical modelsen_US
dc.typeArticleen_US
dc.identifier.citationGupta, Abhinav and Lermusiaux, Pierre F.J. 2023. "Bayesian learning of coupled biogeochemical–physical models." Progress in Oceanography, 216.
dc.contributor.departmentMassachusetts Institute of Technology. Department of Mechanical Engineering
dc.contributor.departmentMassachusetts Institute of Technology. Center for Computational Science and Engineering
dc.relation.journalProgress in Oceanographyen_US
dc.eprint.versionAuthor's final manuscripten_US
dc.type.urihttp://purl.org/eprint/type/JournalArticleen_US
eprint.statushttp://purl.org/eprint/status/PeerRevieweden_US
dc.date.updated2024-03-18T17:54:13Z
dspace.orderedauthorsGupta, A; Lermusiaux, PFJen_US
dspace.date.submission2024-03-18T17:54:20Z
mit.journal.volume216en_US
mit.licenseOPEN_ACCESS_POLICY
mit.metadata.statusAuthority Work and Publication Information Neededen_US


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