We propose a new class of data-driven, physics-based, neural networks for constitutive modeling of strain rate independent processes at the material point level, which we define as Thermodynamics-based Artificial Neural Networks (TANNs). The two basic principles of thermodynamics are encoded in the network’s architecture by taking advantage of automatic differentiation to compute the numerical derivatives of a network with respect to its inputs. In this way, derivatives of the free-energy, the dissipation rate and their relation with the stress and internal state variables are hardwired in the architecture of TANNs. Consequently, our approach does not have to identify the underlying pattern of thermodynamic laws during training, reducing th...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
The damage of mechanical structures is a permanent concern in engineering, related to issues of dura...
International audienceThe damage of mechanical structures is a permanent concern in engineering, rel...
The mathematical formulation of constitutive models to describe the path-dependent, i.e., inelastic,...
Rubber hyperelasticity is characterized by a strain energy function. The strain energy functions fal...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
We applied physics-informed neural networks to solve the constitutive relations for nonlinear, path-...
Nature has always been our inspiration in the research, design and development of materials and has ...
A novel data-driven approach to learn constitutive law with observable data is proposed in the conte...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
The damage of mechanical structures is a permanent concern in engineering, related to issues of dura...
International audienceThe damage of mechanical structures is a permanent concern in engineering, rel...
The mathematical formulation of constitutive models to describe the path-dependent, i.e., inelastic,...
Rubber hyperelasticity is characterized by a strain energy function. The strain energy functions fal...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
We applied physics-informed neural networks to solve the constitutive relations for nonlinear, path-...
Nature has always been our inspiration in the research, design and development of materials and has ...
A novel data-driven approach to learn constitutive law with observable data is proposed in the conte...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...