Smart Structures and Systems

Volume 31, Number 1, 2023, pages 29-43

DOI: 10.12989/sss.2023.31.1.029

Bayesian model update for damage detection of a steel plate girder bridge

Xin Zhou, Feng-Liang Zhang, Yoshinao Goi and Chul-Woo Kim

Abstract

This study investigates the possibility of damage detection of a real bridge by means of a modal parameter-based finite element (FE) model update. Field moving vehicle experiments were conducted on an actual steel plate girder bridge. In the damage experiment, cracks were applied to the bridge to simulate damage states. A fast Bayesian FFT method was employed to identify and quantify uncertainties of the modal parameters then these modal parameters were used in the Bayesian model update. Material properties and boundary conditions are taken as uncertainties and updated in the model update process. Observations showed that although some differences existed in the results obtained from different model classes, the discrepancy between modal parameters of the FE model and those experimentally obtained was reduced after the model update process, and the updated parameters in the numerical model were indeed affected by the damage. The importance of boundary conditions in the model updating process is also observed. The capability of the MCMC model update method for application to the actual bridge structure is assessed, and the limitation of FE model update in damage detection of bridges using only modal parameters is observed.

Key Words

Bayesian model update; damage detection; field vibration test; Markov chain Monte Carlo; steel plate girder bridge

Address

(1) Xin Zhou, Yoshinao Goi, Chul-Woo Kim: Department of Civil and Earth Resources Engineering, Kyoto University, Kyoto 615-8540, Japan; (2) Feng-Liang Zhang: School of Civil and Environmental Engineering, Harbin Institute of Technology, Shenzhen 518055, China.