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dc.creatorPapadimitriou C., Argyris C., Panetsos P.en
dc.date.accessioned2023-01-31T09:42:15Z
dc.date.available2023-01-31T09:42:15Z
dc.date.issued2018
dc.identifier10.1007/978-3-319-67443-8_3
dc.identifier.issn23662557
dc.identifier.urihttp://hdl.handle.net/11615/77570
dc.description.abstractThis work presents a comprehensive Bayesian framework for integrating information from data and models of civil infrastructure systems. In the proposed framework, modeling uncertainties are quantified and propagated through simulations using probability tools. Bayes theorem is used to select the most appropriate model among alternative competing ones, to estimate the parameters of a model and the uncertainties in the parameters, and to propagate the uncertainties in output quantities of interest that are important for evaluating structural performance and safety. The framework is developed using as data the modal characteristics estimated from response time history measurements. Theoretical challenges associated with the selection of the model prediction error equation introduced to build up the likelihood are pointed out. Bayesian tools such as Laplace asymptotic approximations and sampling algorithms require a moderate to very large number of system re-analyses to be performed, often resulting in excessive computational demands. Computationally efficient techniques are presented to drastically speed up computations within the Bayesian uncertainty quantification framework. These techniques include model reduction techniques based on component mode synthesis, surrogate models and parallelized Bayesian algorithms to exploit HPC environments. Bayesian optimal experimental design methods constitute a major component of the proposed framework for cost-effectively selecting the most informative data. A computationally efficient asymptotic approximation is proposed to simplify information-based utility functions used for optimizing the placement of sensors in a structure. The structure of the approximation provides insight into the use of the prediction error spatial correlation to avoid sensor clustering, as well as the effect of the prior uncertainty on the optimal sensor configuration. The framework is illustrated by integrating vibration measurements and high fidelity models for (a) a reinforced concrete bridge to update stiffness related model parameters, and (b) a circular hanger to estimate the axial tension required in structural safety evaluations. © Springer International Publishing AG 2018.en
dc.language.isoenen
dc.sourceLecture Notes in Civil Engineeringen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85060202636&doi=10.1007%2f978-3-319-67443-8_3&partnerID=40&md5=bc85cea8bf9dd45211c32b2a4b96c81d
dc.subjectApproximation algorithmsen
dc.subjectBayesian networksen
dc.subjectComputation theoryen
dc.subjectComputational efficiencyen
dc.subjectConcrete bridgesen
dc.subjectInference enginesen
dc.subjectModal analysisen
dc.subjectParameter estimationen
dc.subjectReinforced concreteen
dc.subjectStructural analysisen
dc.subjectStructural dynamicsen
dc.subjectBayesian inferenceen
dc.subjectBayesian optimal experimental designsen
dc.subjectCivil infrastructure systemsen
dc.subjectComputationally efficienten
dc.subjectModel reduction techniquesen
dc.subjectModel Selectionen
dc.subjectOptimal sensor placementen
dc.subjectUncertainty quantificationsen
dc.subjectUncertainty analysisen
dc.subjectSpringeren
dc.titleInformation-driven modeling of structures using a Bayesian frameworken
dc.typebookChapteren


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