In recent years, Bayesian model updating techniques based on measured data have been applied to system identification of structures and to structural health monitoring. A fully probabilistic Bayesian model updating approach provides a robust and rigorous framework for these applications due to its ability to characterize modeling uncertainties associated with the underlying structural system and to its exclusive foundation on the probability axioms. The plausibility of each structural model within a set of possible models, given the measured data, is quantified by the joint posterior probability density function of the model parameters. This Bayesian approach requires the evaluation of multidimensional integrals, and this usually cannot be ...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
Abstract: In this paper, an adaptive Markov Chain Monte Carlo (MCMC) approach for Bayesian finite el...
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model upd...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
In a full Bayesian probabilistic framework for "robust" system identification, structural response p...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
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 uncertainties by utilizing dynamic res...
Abstract: In this paper, an adaptive Markov Chain Monte Carlo (MCMC) approach for Bayesian finite el...
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model upd...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
In a full Bayesian probabilistic framework for "robust" system identification, structural response p...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
Model updating procedures based on experimental data are commonly used in case of historic buildings...
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 uncertainties by utilizing dynamic res...
Abstract: In this paper, an adaptive Markov Chain Monte Carlo (MCMC) approach for Bayesian finite el...
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model upd...