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Vibration-based Bayesian model updating of civil engineering structures applying Gaussian process metamodel

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journal contribution
posted on 2022-05-30, 12:52 authored by Hossein Moravej, Tommy HT Chan, Khac-Duy Nguyen, Andre JesusAndre Jesus

Structural health monitoring plays a significant role in providing information regarding the performance of structures throughout their life spans. However, information that is directly extracted from monitored data is usually susceptible to uncertainties and not reliable enough to be used for structural investigations. Finite element model updating is an accredited framework that reliably identifies structural behavior. Recently, the modular Bayesian approach has emerged as a probabilistic technique in calibrating the finite element model of structures and comprehensively addressing uncertainties. However, few studies have investigated its performance on real structures. In this article, modular Bayesian approach is applied to calibrate the finite element model of a lab-scaled concrete box girder bridge. This study is the first to use the modular Bayesian approach to update the initial finite element model of a real structure for two states—undamaged and damaged conditions—in which the damaged state represents changes in structural parameters as a result of aging or overloading. The application of the modular Bayesian approach in the two states provides an opportunity to examine the performance of the approach with observed evidence. A discrepancy function is used to identify the deviation between the outputs of the experimental and numerical models. To alleviate computational burden, the numerical model and the model discrepancy function are replaced by Gaussian processes. Results indicate a significant reduction in the stiffness of concrete in the damaged state, which is identical to cracks observed on the body of the structure. The discrepancy function reaches satisfying ranges in both states, which implies that the properties of the structure are predicted accurately. Consequently, the proposed methodology contributes to a more reliable judgment about structural safety.

Funding

Development of Intelligent Structures that can Self-evaluate Deterioration

Australian Research Council

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History

School

  • Architecture, Building and Civil Engineering

Published in

Advances in Structural Engineering

Volume

22

Issue

16

Pages

3487 - 3502

Publisher

SAGE Publications

Version

  • AM (Accepted Manuscript)

Rights holder

© The Authors

Publisher statement

This paper was accepted for publication in the journal Advances in Structural Engineering and the definitive published version is available at https://doi.org/10.1177/1369433219858723. Users who receive access to an article through a repository are reminded that the article is protected by copyright and reuse is restricted to non-commercial and no derivative uses. Users may also download and save a local copy of an article accessed in an institutional repository for the user's personal reference. For permission to reuse an article, please follow our Process for Requesting Permission: https://uk.sagepub.com/en-gb/eur/process-for-requesting-permission

Publication date

2019-07-01

Copyright date

2019

ISSN

1369-4332

eISSN

2048-4011

Language

  • en

Depositor

Dr Andre Jesus. Deposit date: 27 May 2022

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