An adaptive kriging meta-model for Bayesian finite element model updating,
Abstract
An adaptive meta-model is integrated into a finite element model updating formulation using dynamic response data. A Bayesian model updating approach based on a stochastic simulation method is considered in the present formulation. Such approach is combined with a surrogate technique and an ef- ficient model reduction technique. The integration of these techniques into the updating process reduces the computational effort to manageable levels allowing the solution of complex problems.
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| Fecha de publicación: | 2017 |
| Año de Inicio/Término: | 6-10 August, 2017 |