We present a statistical method for recovering the material parameters of a heterogeneous hyperelastic body. Under the Bayesian methodology for statistical inverse problems, the posterior distribution encodes the probability of the material parameters given the available displacement observations and can be calculated by combining prior knowledge with a finite element model of the likelihood. In this study we concentrate on a case study where the observations of the body are limited to the displacements on the surface of the domain. In this type of problem the Bayesian framework (in comparison with a classical PDE-constrained optimisation framework) can give not only a point estimate of the parameters but also quantify uncertainty on the p...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
We discuss Bayesian inference for the identi cation of elastoplastic material parameters. In additio...
We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
We present a method for calculating a Bayesian uncertainty estimate on the recovered material parame...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
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), ...
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...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
The aim of the current work is to develop a Bayesian approach to model and simulate the behavior of ...
This contribution discusses Bayesian inference (BI) as an approach to identify parameters in viscoel...
The deformations of several slender structures at nano-scale are conceivably sensitive to their non-...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
We discuss Bayesian inference for the identi cation of elastoplastic material parameters. In additio...
We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
We present a method for calculating a Bayesian uncertainty estimate on the recovered material parame...
We consider the problem of recovering the material parameters of a hyperelastic material [1] in the ...
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), ...
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...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
The aim of the current work is to develop a Bayesian approach to model and simulate the behavior of ...
This contribution discusses Bayesian inference (BI) as an approach to identify parameters in viscoel...
The deformations of several slender structures at nano-scale are conceivably sensitive to their non-...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
We discuss Bayesian inference for the identi cation of elastoplastic material parameters. In additio...
We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This...