In order to develop force fields (FF) for molecular dynamics simulations that retain the accuracy of ab initio density functional theory (DFT), we developed a machine learning protocol based on an energy decomposition scheme that extracts atomic energies from DFT calculations. Our DFT to FF (DFT2FF) approach provides almost hundreds of times more data for the DFT energies, which dramatically improves accuracy with less DFT calculations. In addition, we use piecewise cosine basis functions to systematically construct symmetry invariant features into the neural network model. We illustrate this DFT2FF approach for amorphous silicon where only 800 DFT configurations are sufficient to achieve an accuracy of 1 meV/atom for energy and 0.1 eV/A fo...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
Machine learning force field (ML-FF) has emerged as a potential promising approach to simulate vario...
In order to develop force fields (FF) for molecular dynamics simulations that retain the accuracy of...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
Data-driven machine learning force fields (MLFs) are more and more popular in atomistic simulations ...
Classical force fields (FF) based on machine learning (ML) methods show great potential for large sc...
Classical force fields (FFs) based on machine learning (ML) methods show great potential for large s...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Computing material properties at the ab-initio level of detail is computationally prohibitive for la...
Simulations of molecular systems using electronic structure methods are still not feasible for many ...
peer reviewedWe combine density-functional tight binding (DFTB) with deep tensor neural networks (DT...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
Machine learning force field (ML-FF) has emerged as a potential promising approach to simulate vario...
In order to develop force fields (FF) for molecular dynamics simulations that retain the accuracy of...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
Data-driven machine learning force fields (MLFs) are more and more popular in atomistic simulations ...
Classical force fields (FF) based on machine learning (ML) methods show great potential for large sc...
Classical force fields (FFs) based on machine learning (ML) methods show great potential for large s...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Computing material properties at the ab-initio level of detail is computationally prohibitive for la...
Simulations of molecular systems using electronic structure methods are still not feasible for many ...
peer reviewedWe combine density-functional tight binding (DFTB) with deep tensor neural networks (DT...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
Machine learning force field (ML-FF) has emerged as a potential promising approach to simulate vario...