Počet záznamů: 1  

Efficient Implementation of the Bayesian Inversion by MCMC with Acceleration of Posterior Sampling Using Surrogate Models

  1. 1.
    SYSNO ASEP0543700
    Druh ASEPC - Konferenční příspěvek (mezinárodní konf.)
    Zařazení RIVD - Článek ve sborníku
    NázevEfficient Implementation of the Bayesian Inversion by MCMC with Acceleration of Posterior Sampling Using Surrogate Models
    Tvůrce(i) Domesová, Simona (UGN-S) ORCID, SAI, RID
    Béreš, Michal (UGN-S) ORCID, RID, SAI
    Blaheta, Radim (UGN-S) RID, SAI, ORCID
    Celkový počet autorů3
    Zdroj.dok.Lecture Notes in Civil Engineering, Challenges and Innovations in Geomechanics. - Cham : Springer, 2021 / Barla M. ; Di Donna A. ; Sterpi D. - ISSN 2366-2557 - ISBN 978-3-030-64513-7
    Rozsah stran(2021), s. 846-853
    Poč.str.8 s.
    Forma vydáníOnline - E
    AkceInternational Conference of the International Association for Computer Methods and Advances in Geomechanics /16./
    Datum konání05.05.2021 - 08.05.2021
    Místo konáníTurin
    ZeměIT - Itálie
    Typ akceWRD
    Jazyk dok.eng - angličtina
    Země vyd.CH - Švýcarsko
    Klíč. slovaBayesian inversion ; posterior sampling ; delayed acceptance Metropolis-Hastings algorithm ; surrogate model ; inverse problems in hydro-mechanics
    Vědní obor RIVJN - Stavebnictví
    Obor OECDApplied mathematics
    CEPTK02010118 GA TA ČR - Technologická agentura ČR
    Způsob publikováníOmezený přístup
    Institucionální podporaUGN-S - RVO:68145535
    EID SCOPUS85101546848
    DOI10.1007/978-3-030-64514-4_91
    AnotaceThe contribution is motivated by the Bayesian approach to the solution of material identification problems which frequently appear in geo-engineering. We shall consider the cases with associated forward model describing flow in porous media with or without fractures as well as coupled hydro-mechanical processes. When assuming uncertainties in observed data, the use of the Bayesian inversion is natural. In comparison to deterministic methods, which lead only to a point estimate of the identified parameters, the Bayesian approach provides their probability distribution. The implementation of the Bayesian inversion is realized via Markov Chain Monte Carlo methods. The paper aims at the acceleration of the posterior sampling using a surrogate model that provides a polynomial approximation of the full forward model. The sampling procedure is based on the delayed acceptance Metropolis-Hastings (DAMH) algorithm. Therefore, for each proposed sample, the acceptance decision contains a preliminary step, which works only with an approximated posterior distribution constructed using the surrogate model. Furthermore, the approximated posterior distribution is being updated using new snapshots obtained during the sampling process. The posterior distribution updates are realized via updates of the surrogate model. The application of the described approach is shown through several model examples including flow in porous media with fractures and hydro-mechanical coupling.
    PracovištěÚstav geoniky
    KontaktLucie Gurková, lucie.gurkova@ugn.cas.cz, Tel.: 596 979 354
    Rok sběru2022
    Elektronická adresahttps://link.springer.com/chapter/10.1007%2F978-3-030-64514-4_91
Počet záznamů: 1  

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