peer reviewedWe discuss Bayesian inference for the identi cation of elastoplastic material parameters. In addition to errors in the stress measurements, which are commonly considered, we furthermore consider errors in the strain measurements. Since a difference between the model and the experimental data may still be present if the data is not contaminated by noise, we also incorporate the possible error of the model itself. The three formulations to describe model uncertainty in this contribution are: (1) a random variable which is taken from a normal distribution with constant parameters, (2) a random variable which is taken from a normal distribution with an input-dependent mean, and (3) a Gaussian random process with a stationary covari...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
Uncertainty quantification and its propagation across multi-scale model/experiment chains are key el...
The aim of the current work is to develop a Bayesian approach to model and simulate the behavior of ...
We discuss Bayesian inference for the identi cation of elastoplastic material parameters. In additio...
We discuss Bayesian inference for the identification of elastoplastic material parameters. In additi...
We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
In computational mechanics, approaches based on error minimisation (e.g. the least squares method), ...
Material parameters identified by mechanical tests can vary from one specimen to another. This varia...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
This contribution discusses Bayesian inference (BI) as an approach to identify parameters in viscoel...
Motivated by the need to quantify uncertainties in the mechanical behaviour of solid materials, we p...
To evaluate the cyclic behaviour under different loading conditions using the kinematic and isotropic...
http://218.196.244.90/comp_meeting/IACM-ECCOMAS08/pdfs/a1601.pdfInternational audienceIdentifying pa...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
Uncertainty quantification and its propagation across multi-scale model/experiment chains are key el...
The aim of the current work is to develop a Bayesian approach to model and simulate the behavior of ...
We discuss Bayesian inference for the identi cation of elastoplastic material parameters. In additio...
We discuss Bayesian inference for the identification of elastoplastic material parameters. In additi...
We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
In computational mechanics, approaches based on error minimisation (e.g. the least squares method), ...
Material parameters identified by mechanical tests can vary from one specimen to another. This varia...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
This contribution discusses Bayesian inference (BI) as an approach to identify parameters in viscoel...
Motivated by the need to quantify uncertainties in the mechanical behaviour of solid materials, we p...
To evaluate the cyclic behaviour under different loading conditions using the kinematic and isotropic...
http://218.196.244.90/comp_meeting/IACM-ECCOMAS08/pdfs/a1601.pdfInternational audienceIdentifying pa...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
Uncertainty quantification and its propagation across multi-scale model/experiment chains are key el...
The aim of the current work is to develop a Bayesian approach to model and simulate the behavior of ...