Perspective: Machine learning potentials for atomistic simulations

被引:1104
作者
Behler, Joerg [1 ]
机构
[1] Ruhr Univ Bochum, Lehrstuhl Theoret Chem, D-44780 Bochum, Germany
关键词
MOLECULAR-DYNAMICS SIMULATIONS; NEURAL-NETWORK; ENERGY SURFACES; INTERATOMIC POTENTIALS; PATTERN-RECOGNITION; REPRESENTATION; PREDICTIONS; GENERATION; CHEMISTRY;
D O I
10.1063/1.4966192
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Nowadays, computer simulations have become a standard tool in essentially all fields of chemistry, condensed matter physics, and materials science. In order to keep up with state-of-the-art experiments and the ever growing complexity of the investigated problems, there is a constantly increasing need for simulations of more realistic, i.e., larger, model systems with improved accuracy. In many cases, the availability of sufficiently efficient interatomic potentials providing reliable energies and forces has become a serious bottleneck for performing these simulations. To address this problem, currently a paradigm change is taking place in the development of interatomic potentials. Since the early days of computer simulations simplified potentials have been derived using physical approximations whenever the direct application of electronic structure methods has been too demanding. Recent advances in machine learning (ML) now offer an alternative approach for the representation of potential-energy surfaces by fitting large data sets from electronic structure calculations. In this perspective, the central ideas underlying these ML potentials, solved problems and remaining challenges are reviewed along with a discussion of their current applicability and limitations. Published by AIP Publishing.
引用
收藏
页数:9
相关论文
共 73 条
[31]   Optimal construction of a fast and accurate polarisable water potential based on multipole moments trained by machine learning [J].
Handley, Chris M. ;
Hawe, Glenn I. ;
Kell, Douglas B. ;
Popelier, Paul L. A. .
PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2009, 11 (30) :6365-6376
[32]   Next generation interatomic potentials for condensed systems [J].
Handley, Christopher Michael ;
Behler, Joerg .
EUROPEAN PHYSICAL JOURNAL B, 2014, 87 (07)
[33]   Machine Learning Predictions of Molecular Properties: Accurate Many-Body Potentials and Nonlocality in Chemical Space [J].
Hansen, Katja ;
Biegler, Franziska ;
Ramakrishnan, Raghunathan ;
Pronobis, Wiktor ;
von Lilienfeld, O. Anatole ;
Mueller, Klaus-Robert ;
Tkatchenko, Alexandre .
JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2015, 6 (12) :2326-2331
[34]  
Haykin S., 2008, Neural Networks and Learning Machines, V3rd ed.
[35]   Concentration-Dependent Proton Transfer Mechanisms in Aqueous NaOH Solutions: From Acceptor-Driven to Donor-Driven and Back [J].
Hellstroem, Matti ;
Behler, Joerg .
JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2016, 7 (17) :3302-3306
[36]  
Hirn M., ARXIV150202077
[37]   Applications of neural networks to fitting interatomic potential functions [J].
Hobday, S ;
Smith, R ;
Belbruno, J .
MODELLING AND SIMULATION IN MATERIALS SCIENCE AND ENGINEERING, 1999, 7 (03) :397-412
[38]   APPROXIMATION CAPABILITIES OF MULTILAYER FEEDFORWARD NETWORKS [J].
HORNIK, K .
NEURAL NETWORKS, 1991, 4 (02) :251-257
[39]   A polarizable high-rank quantum topological electrostatic potential developed using neural networks: Molecular dynamics simulations on the hydrogen fluoride dimer [J].
Houlding, S. ;
Liem, S. Y. ;
Popelier, P. L. A. .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2007, 107 (14) :2817-2827
[40]   A local interpolation scheme using no derivatives in quantum-chemical calculations [J].
Ishida, T ;
Schatz, GC .
CHEMICAL PHYSICS LETTERS, 1999, 314 (3-4) :369-375