The problem of updating a structural model and its associated uncertainties by utilizing dynamic response data is addressed using a Bayesian statistical framework that can handle the inherent ill-conditioning and possible nonuniqueness in model updating applications. The objective is not only to give more accurate response predictions for prescribed dynamic loadings but also to provide a quantitative assessment of this accuracy. In the methodology presented, the updated (optimal) models within a chosen class of structural models are the most probable based on the structural data if all the models are equally plausible a priori. The prediction accuracy of the optimal structural models is given by also updating probability models for the p...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
Abstract Stochastic model updating methods are described, including prob-abilistic perturbation meth...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertainties by utilizing structural ...
The problem of updating a structural model and its associated uncertainties by utilizing structural ...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
The problem of updating a structural model and its associated uncertainties by utilizing measured dy...
This thesis addresses the problem of updating a structural model and its associated uncertainties by...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
The problem of accurately accessing the health of structures can be addressed through the use of var...
The present study addresses the issues of non-uniqueness and unidentifiability arising in structural...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
Abstract Stochastic model updating methods are described, including prob-abilistic perturbation meth...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertainties by utilizing structural ...
The problem of updating a structural model and its associated uncertainties by utilizing structural ...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
The problem of updating a structural model and its associated uncertainties by utilizing measured dy...
This thesis addresses the problem of updating a structural model and its associated uncertainties by...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
The problem of accurately accessing the health of structures can be addressed through the use of var...
The present study addresses the issues of non-uniqueness and unidentifiability arising in structural...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
Abstract Stochastic model updating methods are described, including prob-abilistic perturbation meth...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...