A new Bayesian modeling framework is proposed to account for the uncertainty in the model parameters arising from model and measurements errors, as well as experimental, operational, environmental and manufacturing variabilities. Uncertainty is embedded in the model parameters using a single level hierarchy where the uncertainties are quantified by Normal distributions with the mean and the covariance treated as hyperparameters. Unlike existing hierarchical Bayesian modelling frameworks, the likelihood function for each observed quantity is built based on the Kullback–Leibler divergence used to quantify the discrepancy between the probability density functions (PDFs) of the model predictions and measurements. The likelihood function is cons...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
International audienceA methodology is presented to quantify uncertainties resulting from the analys...
A new time-domain probabilistic technique based on hierarchical Bayesian modeling (HBM) framework is...
A new Bayesian modeling framework is proposed to account for the uncertainty in the model parameters...
The Bayesian framework for hierarchical modeling is applied to quantify uncertainties, arising mainl...
The hierarchical Bayesian modeling (HBM) framework has recently been developed to tackle the uncerta...
In the multimodel approach, inference is based on an ensemble of model classes. Uncertainties in th...
A stochastic approach is proposed for estimating the variability in structural parameters present in...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
A Bayesian uncertainty quantification and propagation (UQ&P) framework is presented for identifying ...
A hierarchical Bayesian learning framework is proposed to account for multi-level modeling in struct...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
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...
International audienceA methodology is presented to quantify uncertainties resulting from the analys...
A new time-domain probabilistic technique based on hierarchical Bayesian modeling (HBM) framework is...
A new Bayesian modeling framework is proposed to account for the uncertainty in the model parameters...
The Bayesian framework for hierarchical modeling is applied to quantify uncertainties, arising mainl...
The hierarchical Bayesian modeling (HBM) framework has recently been developed to tackle the uncerta...
In the multimodel approach, inference is based on an ensemble of model classes. Uncertainties in th...
A stochastic approach is proposed for estimating the variability in structural parameters present in...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
A Bayesian uncertainty quantification and propagation (UQ&P) framework is presented for identifying ...
A hierarchical Bayesian learning framework is proposed to account for multi-level modeling in struct...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
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...
International audienceA methodology is presented to quantify uncertainties resulting from the analys...
A new time-domain probabilistic technique based on hierarchical Bayesian modeling (HBM) framework is...