Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification and Discovery (EUCLID), we propose an unsupervised Bayesian learning framework for discovery of parsimonious and interpretable constitutive laws with quantifiable uncertainties. As in deterministic EUCLID, we do not resort to stress data, but only to realistically measurable full-field displacement and global reaction force data; as opposed to calibration of an a priori assumed model, we start with a constitutive model ansatz based on a large catalog of candidate functional features; we leverage domain knowledge by including features based on existing, both physics-based and phenomenological, constitutive models. In the new Bayesian-EUCLID app...
Properly modeling the cyclic elastoplastic behavior of structural steels is essential for establishi...
The deformations of several slender structures at nano-scale are conceivably sensitive to their non-...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
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 extend the scope of our recently developed approach for unsupervised automated discovery of mater...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
The mathematical description of the mechanical behavior of solid materials at the continuum scale is...
We propose a new approach for data-driven automated discovery of isotropic hyperelastic constitutive...
We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (E...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
ABSTRACT We present a method for calculating a Bayesian uncertainty estimate on the recovered materi...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
Classically, the mechanical response of materials is described through constitutive models, often in...
Properly modeling the cyclic elastoplastic behavior of structural steels is essential for establishi...
The deformations of several slender structures at nano-scale are conceivably sensitive to their non-...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...
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 extend the scope of our recently developed approach for unsupervised automated discovery of mater...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
The mathematical description of the mechanical behavior of solid materials at the continuum scale is...
We propose a new approach for data-driven automated discovery of isotropic hyperelastic constitutive...
We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (E...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
We present a statistical method for recovering the material parameters of a heterogeneous hyperelast...
ABSTRACT We present a method for calculating a Bayesian uncertainty estimate on the recovered materi...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
Classically, the mechanical response of materials is described through constitutive models, often in...
Properly modeling the cyclic elastoplastic behavior of structural steels is essential for establishi...
The deformations of several slender structures at nano-scale are conceivably sensitive to their non-...
peer reviewedThe aim of this contribution is to explain in a straightforward manner how Bayesian inf...