Here we assess the applicability of graph neural networks (GNNs) for predicting the grain-scale elastic response of polycrystalline metallic alloys. Using GNN surrogate models, grain-averaged stresses during uniaxial elastic tension in Low Solvus High Refractory (LSHR) Ni Superalloy and Ti 7wt%Al (Ti-7Al), as example face centered cubic and hexagonal closed packed alloys, are predicted. A transfer learning approach is taken in which GNN surrogate models are trained using crystal elasticity finite element method simulations and then the trained surrogate models are used to predict the mechanical response of microstructures measured using high-energy X-ray diffraction microscopy. The performance of using various microstructural and micromecha...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Micromechanical modeling of material behavior has become an accepted approach to describe the macros...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
Abstract Various machine learning models have been used to predict the properties of polycrystalline...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
Funding Information: This research was funded by the European Union Horizon 2020 research and innova...
This work focuses on integrating crystal plasticity based deformation models and machine learning te...
Abstract The local prediction of fatigue damage within polycrystals in a high-cycle fatigue setting ...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Anisotropy in the mechanical response of materials with microstructure is common and yet is difficul...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
Accurately predicting the elastic properties of crystalline solids is vital for computational materi...
We propose a physics informed, neural network-based elasto-viscoplasticity (NN-EVP) constitutive mod...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
The continued advancements in material development and design require understanding the relationship...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Micromechanical modeling of material behavior has become an accepted approach to describe the macros...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...
Abstract Various machine learning models have been used to predict the properties of polycrystalline...
Neural networks provide a potentially viable alternative to a differential equation based constituti...
Funding Information: This research was funded by the European Union Horizon 2020 research and innova...
This work focuses on integrating crystal plasticity based deformation models and machine learning te...
Abstract The local prediction of fatigue damage within polycrystals in a high-cycle fatigue setting ...
Abstract Developing accurate yet fast computational tools to simulate complex physical phenomena is ...
Anisotropy in the mechanical response of materials with microstructure is common and yet is difficul...
An artificial neural network (ANN) is used to model nonlinear, large deformation plastic behavior of...
Accurately predicting the elastic properties of crystalline solids is vital for computational materi...
We propose a physics informed, neural network-based elasto-viscoplasticity (NN-EVP) constitutive mod...
Recent advances in machine learning have unlocked new potential for innovation in engineering scienc...
The continued advancements in material development and design require understanding the relationship...
In a concurrent (FE2) multiscale modeling is an increasingly popular approach for modeling complex m...
Micromechanical modeling of material behavior has become an accepted approach to describe the macros...
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-based m...