Abstract The Bhattacharyya distance has been developed as a comprehensive uncertainty quantification metric by capturing multiple uncertainty sources from both numerical predictions and experimental measurements. This work pursues a further investigation of the performance of the Bhattacharyya distance in different methodologies for stochastic model updating, and thus to prove the universality of the Bhattacharyya distance in various currently popular updating procedures. The first procedure is the Bayesian model updating where the Bhattacharyya distance is utilized to define an approximate likelihood function and the transitional Markov chain Monte Carlo algorithm is employed to obtain the posterior distribution of the param...
Bayesian updating is a powerful tool for model calibration and uncertainty quantification when new o...
Bayesian optimization is a sequential procedure for obtaining the global optimum of black-box functi...
We study a class of stochastic programs where some of the elements in the objective function are ran...
The Bhattacharyya distance has been developed as a comprehensive uncertainty quantification metric b...
The Bhattacharyya distance is a stochastic measurement between two samples and taking into account t...
In practical engineering, experimental data is not fully in line with the true system response due t...
© 2019 Elsevier Ltd The tendency of uncertainty analysis has promoted the transformation of sensitiv...
The tendency of uncertainty analysis has promoted the transformation of sensitivity analysis from th...
International audienceThis paper presents an overview of the theoretic framework of stochastic model...
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model upd...
In the real world, a significant challenge faced in the safe operation and maintenance of infrastruc...
AbstractThis manuscript presents a stochastic model updating method, taking both uncertainties in mo...
Abstract Stochastic model updating methods are described, including prob-abilistic perturbation meth...
One of the key challenges of uncertainty analysis in model updating is the lack of experimental data...
In this study, a two-step approximate Bayesian computation (ABC) updating framework using dynamic re...
Bayesian updating is a powerful tool for model calibration and uncertainty quantification when new o...
Bayesian optimization is a sequential procedure for obtaining the global optimum of black-box functi...
We study a class of stochastic programs where some of the elements in the objective function are ran...
The Bhattacharyya distance has been developed as a comprehensive uncertainty quantification metric b...
The Bhattacharyya distance is a stochastic measurement between two samples and taking into account t...
In practical engineering, experimental data is not fully in line with the true system response due t...
© 2019 Elsevier Ltd The tendency of uncertainty analysis has promoted the transformation of sensitiv...
The tendency of uncertainty analysis has promoted the transformation of sensitivity analysis from th...
International audienceThis paper presents an overview of the theoretic framework of stochastic model...
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model upd...
In the real world, a significant challenge faced in the safe operation and maintenance of infrastruc...
AbstractThis manuscript presents a stochastic model updating method, taking both uncertainties in mo...
Abstract Stochastic model updating methods are described, including prob-abilistic perturbation meth...
One of the key challenges of uncertainty analysis in model updating is the lack of experimental data...
In this study, a two-step approximate Bayesian computation (ABC) updating framework using dynamic re...
Bayesian updating is a powerful tool for model calibration and uncertainty quantification when new o...
Bayesian optimization is a sequential procedure for obtaining the global optimum of black-box functi...
We study a class of stochastic programs where some of the elements in the objective function are ran...