Model Updating in Complex Bridge Structures using Kriging Model Ensemble with Genetic Algorithm

Computational cost reduction and the best solution seeking are frequently encountered during model updating for complex structures. In this study, a hybrid algorithm using kriging model and genetic algorithms (GAs) is proposed for updating the Finite Element (FE) model of complex bridge structures e...

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Bibliographic Details
Published in:KSCE journal of civil engineering Vol. 22; no. 9; pp. 3567 - 3578
Main Authors: Qin, Shiqiang, Zhou, Yun-Lai, Cao, Hongyou, Wahab, Magd Abdel
Format: Journal Article
Language:English
Published: Seoul Korean Society of Civil Engineers 01-09-2018
Springer Nature B.V
대한토목학회
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Summary:Computational cost reduction and the best solution seeking are frequently encountered during model updating for complex structures. In this study, a hybrid algorithm using kriging model and genetic algorithms (GAs) is proposed for updating the Finite Element (FE) model of complex bridge structures employing both static and dynamic experimental measurements. The kriging model is first established to approximate the implicit relationship between structural parameters and responses, serving as a surrogate model for complex FE model when deriving analytical responses. An objective function is later defined based on the residual between analytical response values and experimental measured ones. GAs are finally employed to find the best solution by searching on the whole design space of updating parameters selected based on a sensitivity analysis. To verify the proposed algorithm, Caiyuanba Yangtze River Bridge, a double decked of roadway and light railway bridge with a main span of 420 m is used. Both frequencies and displacements predicted by the updated model are more close to experimental measured ones. The results show that the kriging surrogate model has good accuracy in predicting response and can be used as a surrogate model to reduce computational cost, and GAs provide a higher chance to obtain global best solution.
ISSN:1226-7988
1976-3808
DOI:10.1007/s12205-017-1107-7