We propose a physics informed, neural network-based elasto-viscoplasticity (NN-EVP) constitutive modeling framework for predicting the flow response in metals as a function of underlying grain size. The developed NN-EVP algorithm is based on input convex neural networks as a means to strictly enforce thermodynamic consistency, while allowing high expressivity towards model discovery from limited data. It utilizes state-of-the-art machine learning tools within PyTorch's high-performance library providing a flexible tool for data-driven, automated constitutive modeling. To test the performance of the framework, we generate synthetic stress-strain curves using a power law-based model with phenomenological hardening at small strains and test th...
This paper proposes a new technique based on artificial neural network useful for the characterizati...
Computational design of materials processes has received great interests during the past few decades...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
We propose a physics informed, neural network-based elasto-viscoplasticity (NN-EVP) constitutive mod...
This work presents a physics-informed neural network (PINN) based framework to model the strain-rate...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
The continued advancements in material development and design require understanding the relationship...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
Abstract: In this paper, a multilayer feedforward neural network with Bayesian regularization consti...
Here we assess the applicability of graph neural networks (GNNs) for predicting the grain-scale elas...
The mathematical formulation of constitutive models to describe the path-dependent, i.e., inelastic,...
This paper proposes a new technique based on artificial neural network useful for the characterizati...
Computational design of materials processes has received great interests during the past few decades...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
We propose a physics informed, neural network-based elasto-viscoplasticity (NN-EVP) constitutive mod...
This work presents a physics-informed neural network (PINN) based framework to model the strain-rate...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
The continued advancements in material development and design require understanding the relationship...
In the last years, neural networks have been used to learn physical simulations in a wide range of c...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
Abstract: In this paper, a multilayer feedforward neural network with Bayesian regularization consti...
Here we assess the applicability of graph neural networks (GNNs) for predicting the grain-scale elas...
The mathematical formulation of constitutive models to describe the path-dependent, i.e., inelastic,...
This paper proposes a new technique based on artificial neural network useful for the characterizati...
Computational design of materials processes has received great interests during the past few decades...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...