Literature DB >> 22612084

Construction of high-dimensional neural network potentials using environment-dependent atom pairs.

K V Jovan Jose1, Nongnuch Artrith, Jörg Behler.   

Abstract

An accurate determination of the potential energy is the crucial step in computer simulations of chemical processes, but using electronic structure methods on-the-fly in molecular dynamics (MD) is computationally too demanding for many systems. Constructing more efficient interatomic potentials becomes intricate with increasing dimensionality of the potential-energy surface (PES), and for numerous systems the accuracy that can be achieved is still not satisfying and far from the reliability of first-principles calculations. Feed-forward neural networks (NNs) have a very flexible functional form, and in recent years they have been shown to be an accurate tool to construct efficient PESs. High-dimensional NN potentials based on environment-dependent atomic energy contributions have been presented for a number of materials. Still, these potentials may be improved by a more detailed structural description, e.g., in form of atom pairs, which directly reflect the atomic interactions and take the chemical environment into account. We present an implementation of an NN method based on atom pairs, and its accuracy and performance are compared to the atom-based NN approach using two very different systems, the methanol molecule and metallic copper. We find that both types of NN potentials provide an excellent description of both PESs, with the pair-based method yielding a slightly higher accuracy making it a competitive alternative for addressing complex systems in MD simulations.

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Year:  2012        PMID: 22612084     DOI: 10.1063/1.4712397

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  6 in total

1.  Molecular Dynamics Simulations with Quantum Mechanics/Molecular Mechanics and Adaptive Neural Networks.

Authors:  Lin Shen; Weitao Yang
Journal:  J Chem Theory Comput       Date:  2018-02-26       Impact factor: 6.006

2.  Multiscale Quantum Mechanics/Molecular Mechanics Simulations with Neural Networks.

Authors:  Lin Shen; Jingheng Wu; Weitao Yang
Journal:  J Chem Theory Comput       Date:  2016-09-06       Impact factor: 6.006

3.  Enhanced Cellular Materials through Multiscale, Variable-Section Inner Designs: Mechanical Attributes and Neural Network Modeling.

Authors:  Nikolaos Karathanasopoulos; Dimitrios C Rodopoulos
Journal:  Materials (Basel)       Date:  2022-05-17       Impact factor: 3.748

4.  Energy-free machine learning force field for aluminum.

Authors:  Ivan Kruglov; Oleg Sergeev; Alexey Yanilkin; Artem R Oganov
Journal:  Sci Rep       Date:  2017-08-17       Impact factor: 4.379

5.  Machine learning of accurate energy-conserving molecular force fields.

Authors:  Stefan Chmiela; Alexandre Tkatchenko; Huziel E Sauceda; Igor Poltavsky; Kristof T Schütt; Klaus-Robert Müller
Journal:  Sci Adv       Date:  2017-05-05       Impact factor: 14.136

6.  Towards exact molecular dynamics simulations with machine-learned force fields.

Authors:  Stefan Chmiela; Huziel E Sauceda; Klaus-Robert Müller; Alexandre Tkatchenko
Journal:  Nat Commun       Date:  2018-09-24       Impact factor: 14.919

  6 in total

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