© 2018 American Physical Society. We present an accurate interatomic potential for graphene, constructed using the Gaussian approximation potential (GAP) machine learning methodology. This GAP model obtains a faithful representation of a density functional theory (DFT) potential energy surface, facilitating highly accurate (approaching the accuracy of ab initio methods) molecular dynamics simulations. This is achieved at a computational cost which is orders of magnitude lower than that of comparable calculations which directly invoke electronic structure methods. We evaluate the accuracy of our machine learning model alongside that of a number of popular empirical and bond-order potentials, using both experimental and ab initio data as refe...
A Spectral Neighbor Analysis (SNAP) machine learning interatomic potential (MLIP) has been developed...
A first-principles approach is a powerful means of gaining insight into the intrinsic structure and ...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
© 2018 American Physical Society. We present an accurate interatomic potential for graphene, constru...
© 2020 Author(s). We present an accurate machine learning (ML) model for atomistic simulations of ca...
We present an accurate machine learning (ML) model for atomistic simulations of carbon, constructed ...
Establishing the structure-property relationship for grain boundaries (GBs) is critical for developi...
We introduce a Gaussian approximation potential (GAP) for atomistic simulations of liquid and amorph...
One of the ultimate goals of computational modeling in condensed matter is to be able to accurately ...
The negative Poisson`s ratio (NPR) is a novel property of materials, which enhances the mechanical f...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
The possibility of band gap engineering in graphene opens countless new opportunities for applicatio...
Machine Learning interatomic potentials (ML-IAP) are currently the most promising Non-empirical IAPs...
In this research study, we employ machine learning algorithms to perform molecular dynamics simulati...
<p>Graphene is a 2D carbon material that is impermeable to all gases. By engineering pores into grap...
A Spectral Neighbor Analysis (SNAP) machine learning interatomic potential (MLIP) has been developed...
A first-principles approach is a powerful means of gaining insight into the intrinsic structure and ...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
© 2018 American Physical Society. We present an accurate interatomic potential for graphene, constru...
© 2020 Author(s). We present an accurate machine learning (ML) model for atomistic simulations of ca...
We present an accurate machine learning (ML) model for atomistic simulations of carbon, constructed ...
Establishing the structure-property relationship for grain boundaries (GBs) is critical for developi...
We introduce a Gaussian approximation potential (GAP) for atomistic simulations of liquid and amorph...
One of the ultimate goals of computational modeling in condensed matter is to be able to accurately ...
The negative Poisson`s ratio (NPR) is a novel property of materials, which enhances the mechanical f...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
The possibility of band gap engineering in graphene opens countless new opportunities for applicatio...
Machine Learning interatomic potentials (ML-IAP) are currently the most promising Non-empirical IAPs...
In this research study, we employ machine learning algorithms to perform molecular dynamics simulati...
<p>Graphene is a 2D carbon material that is impermeable to all gases. By engineering pores into grap...
A Spectral Neighbor Analysis (SNAP) machine learning interatomic potential (MLIP) has been developed...
A first-principles approach is a powerful means of gaining insight into the intrinsic structure and ...
Machine learning of the quantitative relationship between local environment descriptors and the pote...