Implementation of an adaptive meta-model for Bayesia finite element model updating

Jensen, H, Esse C, Araya V, Papadimitriou C

Abstract

This work explores the feasibility of integrating an adaptive meta-model 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 efficient model reduction technique. In particular, an adaptive surrogate model based on kriging interpolants and a reduction technique based on substructure coupling are considered. The integration of these techniques into the updating process reduces the computational effort to manageable levels allowing the solution of complex problems. The effectiveness of the proposed strategy is demonstrated with three model updating applications.

Más información

Fecha de publicación: 2015
Año de Inicio/Término: Nov. 4-6, 2015