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dc.creatorSedehi O., Papadimitriou C., Katafygiotis L.S.en
dc.date.accessioned2023-01-31T09:54:57Z
dc.date.available2023-01-31T09:54:57Z
dc.date.issued2020
dc.identifier10.1016/j.probengmech.2020.103047
dc.identifier.issn02668920
dc.identifier.urihttp://hdl.handle.net/11615/78880
dc.description.abstractIn the presence of modeling errors, the mainstream Bayesian methods seldom give a realistic account of uncertainties as they commonly underestimate the inherent variability of parameters. This problem is not due to any misconceptions in the Bayesian framework since it is robust with respect to the modeling assumptions and the observed data. Rather, this issue has deep roots in users’ inability to develop an appropriate class of probabilistic models. This paper bridges this significant gap, introducing a novel Bayesian hierarchical setting, which breaks time-history vibration responses into several segments so as to capture and identify the variability of inferred parameters over the segments. Since the computation of the posterior distributions in hierarchical models is expensive and cumbersome, novel marginalization strategies, asymptotic approximations, and maximum a posteriori estimations are proposed and outlined in a computational algorithm aiming to handle both uncertainty quantification and propagation. For the first time, the connection between the ensemble covariance matrix and hyper distribution parameters is characterized through approximate estimations. Experimental and numerical examples are employed to illustrate the efficacy and efficiency of the proposed method. It is observed that, when the segments correspond to various system operating conditions and input characteristics, the proposed method delivers robust parametric uncertainties with respect to unknown phenomena such as ambient conditions, input characteristics, and environmental factors. © 2020 Elsevier Ltden
dc.language.isoenen
dc.sourceProbabilistic Engineering Mechanicsen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85079533451&doi=10.1016%2fj.probengmech.2020.103047&partnerID=40&md5=5ade25350a1be08fe0516a0cc57818da
dc.subjectApproximation algorithmsen
dc.subjectBayesian networksen
dc.subjectCovariance matrixen
dc.subjectHierarchical systemsen
dc.subjectNumerical methodsen
dc.subjectStructural dynamicsen
dc.subjectBayesian learningen
dc.subjectHierarchical modelen
dc.subjectModel updatingen
dc.subjectResponse predictionen
dc.subjectUncertainty propagationen
dc.subjectUncertainty quantificationsen
dc.subjectUncertainty analysisen
dc.subjectElsevier Ltden
dc.titleData-driven uncertainty quantification and propagation in structural dynamics through a hierarchical Bayesian frameworken
dc.typejournalArticleen


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