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Published February 1, 2019 | Supplemental Material + Published
Journal Article Open

Density functional theory based neural network force fields from energy decompositions

Abstract

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 for forces. We then use the resulting FF model to calculate the thermal conductivity of amorphous Si based on long molecular dynamics simulations. The dramatic speedup in training in our DFT2FF protocol allows the adoption of a simulation paradigm where an accurate and problem specific FF for a given physics phenomenon is trained on-the-spot through a quick DFT precalculation and FF training.

Additional Information

© 2019 American Physical Society. Received 24 September 2018; revised manuscript received 14 December 2018; published 6 February 2019. We thank Dr. Ling Miao for the help in evaluating the force field energies in Fig. 6(d). This work was supported by the Director, Office of Science, Office of Basic Energy Science, Materials Science and Engineering Division, of the U.S. Department of Energy under Contract No. DE-AC02-05CH11231, through the Material Theory (KC2301) program in Lawrence Berkeley National Laboratory. The work performed by Y.H. and W.A.G. was supported by the Joint Center for Artificial Photosynthesis, a Department of Energy (DOE) Energy Innovation Hub, supported through the Office of Science of the U.S. Department of Energy under Award No. DE-SC0004993. This work uses the resource of the National Energy Research Scientific Computing Center (NERSC) as well as the Oak Ridge Leadership Computing Facility through the INCITE project.

Attached Files

Published - PhysRevB.99.064103.pdf

Supplemental Material - DFT_based_Neural_Network_Force_fields_from_Energy_Decompositions_-_Huang_Kang_Goddard_Wang_-18Jan-SM.pdf

Files

DFT_based_Neural_Network_Force_fields_from_Energy_Decompositions_-_Huang_Kang_Goddard_Wang_-18Jan-SM.pdf

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023