We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (Efficient Unsupervised Constitutive Law Identification and Discovery), and we apply it here to the discovery of plasticity models, including arbitrarily shaped yield surfaces and isotropic and/or kinematic hardening laws. The approach is unsupervised, i.e., it requires no stress data but only full-field displacement and global force data; it delivers interpretable models, i.e., models that are embodied by parsimonious mathematical expressions discovered through sparse regression of a potentially large catalog of candidate functions; it is one-shot, i.e., discovery only needs one experiment. The material model library is constructed by expandin...
| openaire: EC/H2020/857470/EU//NOMATEN Funding Information: We acknowledge support from the Europea...
A severe obstacle for the routine use of crystal plasticity models is the effort associated with det...
Trained machine learning (ML) algorithms can serve as numerically efficient surrogate models of soph...
We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (E...
We extend the scope of our recently developed approach for unsupervised automated discovery of mater...
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...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Classically, the mechanical response of materials is described through constitutive models, often in...
International audienceComputational mechanics is taking an enormous importance in industry nowadays....
Constitutive models for plastic deformation of metals are typically based on flow rules determining ...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
In recent times a growing interest has arose on the development of data-driven techniques to avoid t...
| openaire: EC/H2020/857470/EU//NOMATEN Funding Information: We acknowledge support from the Europea...
A severe obstacle for the routine use of crystal plasticity models is the effort associated with det...
Trained machine learning (ML) algorithms can serve as numerically efficient surrogate models of soph...
We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (E...
We extend the scope of our recently developed approach for unsupervised automated discovery of mater...
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...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Classically, the mechanical response of materials is described through constitutive models, often in...
International audienceComputational mechanics is taking an enormous importance in industry nowadays....
Constitutive models for plastic deformation of metals are typically based on flow rules determining ...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law Identification a...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
In recent times a growing interest has arose on the development of data-driven techniques to avoid t...
| openaire: EC/H2020/857470/EU//NOMATEN Funding Information: We acknowledge support from the Europea...
A severe obstacle for the routine use of crystal plasticity models is the effort associated with det...
Trained machine learning (ML) algorithms can serve as numerically efficient surrogate models of soph...