The use of artificial neural network (ANN) potentials trained with first-principles calculations has emerged as a promising approach for molecular dynamics (MD) simulations encompassing large space and time scales while retaining first-principles accuracy. To date, however, the application of ANN-MD has been limited to near-equilibrium processes. Here we combine first-principles-trained ANN-MD with multiscale shock theory (MSST) to successfully describe far-from-equilibrium shock phenomena. Our ANN-MSST-MD approach describes shock-wave propagation in solids with first-principles accuracy but a 5000 times shorter computing time. Accordingly, ANN-MD-MSST was able to resolve fine, long-time elastic deformation at low shock speed, which was imp...
AbstractThe evolution of a solid-gas mixture under the influence of a shock wave depends on particle...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
Parametric and non-parametric machine learning potentials have emerged recently as a way to improve ...
The use of artificial neural network (ANN) potentials trained with first-principles calculations has...
The use of artificial neural network (ANN) potentials trained with first-principles calculations has...
This paper presents an artificial neural network-based multiscale method for coupling continuum and ...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
To determine microscopic reaction mechanisms of energetic materials, a problem exists when there are...
Molecular dynamic (MD) simulations offer a powerful means of understanding the microscopic character...
Abstract This work proposes a new machine learning (ML)-based paradigm aiming to enhance the computa...
Study of the propagation of shock waves in condensed matter has led to new discoveries ranging from ...
AbstractThe evolution of a solid-gas mixture under the influence of a shock wave depends on particle...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
Parametric and non-parametric machine learning potentials have emerged recently as a way to improve ...
The use of artificial neural network (ANN) potentials trained with first-principles calculations has...
The use of artificial neural network (ANN) potentials trained with first-principles calculations has...
This paper presents an artificial neural network-based multiscale method for coupling continuum and ...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
To determine microscopic reaction mechanisms of energetic materials, a problem exists when there are...
Molecular dynamic (MD) simulations offer a powerful means of understanding the microscopic character...
Abstract This work proposes a new machine learning (ML)-based paradigm aiming to enhance the computa...
Study of the propagation of shock waves in condensed matter has led to new discoveries ranging from ...
AbstractThe evolution of a solid-gas mixture under the influence of a shock wave depends on particle...
International audienceMachine Learning methods and, in particular, Artificial Neural Networks (ANNs)...
Parametric and non-parametric machine learning potentials have emerged recently as a way to improve ...