The deep energy method (DEM) has been used to solve the elastic deformation of structures with linear elasticity, hyperelasticity, and strain-gradient elasticity material models based on the principle of minimum potential energy. In this work, we extend DEM to elastoplasticity problems involving path dependence and irreversibility. A loss function inspired by the discrete variational formulation of plasticity is proposed. The radial return algorithm is coupled with DEM to update the plastic internal state variables without violating the Kuhn-Tucker consistency conditions. Finite element shape functions and their gradients are used to approximate the spatial gradients of the DEM-predicted displacements, and Gauss quadrature is used to integr...
Data-driven methods have changed the way we understand and model materials. However, while providing...
This study presents an AI-based constitutive modelling framework wherein the prediction model direct...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Data-driven methods are becoming an essential part of computational mechanics due to their unique ad...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
Abstract We propose a deep neural network (DNN) as a fast surrogate model for local stress calculati...
This paper explores the possibilities of applying physics-informed neural networks (PINNs) in topolo...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
We introduce a de novo elastography method to learn the elasticity of solids from measured strains. ...
Real-time simulation of elastic structures is essential in many applications, from computer-guided s...
The analytical description of path-dependent elastic-plastic responses of a granular system is highl...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
A novel deep operator network (DeepONet) with a residual U-Net (ResUNet) as the trunk network is dev...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
Data-driven methods have changed the way we understand and model materials. However, while providing...
This study presents an AI-based constitutive modelling framework wherein the prediction model direct...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Data-driven methods are becoming an essential part of computational mechanics due to their unique ad...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
Abstract We propose a deep neural network (DNN) as a fast surrogate model for local stress calculati...
This paper explores the possibilities of applying physics-informed neural networks (PINNs) in topolo...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
We introduce a de novo elastography method to learn the elasticity of solids from measured strains. ...
Real-time simulation of elastic structures is essential in many applications, from computer-guided s...
The analytical description of path-dependent elastic-plastic responses of a granular system is highl...
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-c...
A novel deep operator network (DeepONet) with a residual U-Net (ResUNet) as the trunk network is dev...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
Data-driven methods have changed the way we understand and model materials. However, while providing...
This study presents an AI-based constitutive modelling framework wherein the prediction model direct...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...