FE2 multiscale simulations of history-dependent materials are accelerated by means of a recurrent neural network (RNN) surrogate for the history-dependent micro level response. We propose a simple strategy to efficiently collect stress–strain data from the micro model, and we modify the RNN model such that it resembles a nonlinear finite element analysis procedure during training. We then implement the trained RNN model in the FE2 scheme and employ automatic differentiation to compute the consistent tangent. The exceptional performance of the proposed model is demonstrated through a number of academic examples using strain-softening Perzyna viscoplasticity as the nonlinear material model at the micro level.Accepted author manuscriptApplied ...
Data for: On the Importance of Self-consistency in Recurrent Neural Network Models Representing Elas...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
FE2 multiscale simulations of history-dependent materials are accelerated by means of a recurrent ne...
An artificial Neural Network (NNW) is designed to serve as a surrogate model of micro-scale simulati...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
peer reviewedArtificial Neural Networks (NNWs) are appealing functions to substitute high dimensiona...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
We study the acceleration of the finite element method (FEM) simulations using machine learning (ML)...
International audienceA stochastic data-driven multilevel finite-element (FE2) method is introduced ...
A finite element model of a tapered tensile specimen with a hardness transition zone in the gauge se...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
Data for: On the Importance of Self-consistency in Recurrent Neural Network Models Representing Elas...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...
FE2 multiscale simulations of history-dependent materials are accelerated by means of a recurrent ne...
An artificial Neural Network (NNW) is designed to serve as a surrogate model of micro-scale simulati...
Driven by the need to accelerate numerical simulations, the use of machine learning techniques is ra...
peer reviewedArtificial Neural Networks (NNWs) are appealing functions to substitute high dimensiona...
Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order ...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Direct numerical simulation of hierarchical materials via homogenization-based concurrent multiscale...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
We study the acceleration of the finite element method (FEM) simulations using machine learning (ML)...
International audienceA stochastic data-driven multilevel finite-element (FE2) method is introduced ...
A finite element model of a tapered tensile specimen with a hardness transition zone in the gauge se...
Codes for the conference paper: Title : Fracture Estimation based on Deformation History with Rec...
Data for: On the Importance of Self-consistency in Recurrent Neural Network Models Representing Elas...
Neural network (NN) constitutive model adjusts itself to describe given stress and strain relationsh...
The present work aims at proposing a hybrid physics-AI based model to predict non-linear mechanical ...