Deep Learning for Nonadiabatic Excited-State Dynamics

被引:127
作者
Chen, Wen-Kai [1 ]
Liu, Xiang-Yang [1 ]
Fang, Wei-Hai [1 ]
Dral, Pavlo O. [2 ]
Cui, Ganglong [1 ]
机构
[1] Beijing Normal Univ, Coll Chem, Minist Educ, Key Lab Theoret & Computat Photochem, Beijing 100875, Peoples R China
[2] Max Planck Inst Kohlenforsch, Kaiser Wilhelm Pl 1, D-45470 Mulheim, Germany
来源
JOURNAL OF PHYSICAL CHEMISTRY LETTERS | 2018年 / 9卷 / 23期
关键词
POTENTIAL-ENERGY SURFACES; NEURAL-NETWORK POTENTIALS; MOLECULAR-DYNAMICS; SCATTERING; APPROXIMATIONS; PARAMETERS; CHEMISTRY; DISCOVERY; DESIGN; MODELS;
D O I
10.1021/acs.jpclett.8b03026
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
In this work we show that deep learning (DL) can be used for exploring complex and highly nonlinear multistate potential energy surfaces of polyatomic molecules and related nonadiabatic dynamics. Our DL is based on deep neural networks (DNNs), which are used as accurate representations of the CASSCF ground- and excited-state potential energy surfaces (PESs) of CH2NH. After geometries near conical intersection are included in the training set, the DNN models accurately reproduce excited-state topological structures; photoisomerization paths; and, importantly, conical intersections. We have also demonstrated that the results from nonadiabatic dynamics run with the DNN models are very close to those from the dynamics run with the pure ab initio method. The present work should encourage further studies of using machine learning methods to explore excited-state potential energy surfaces and nonadiabatic dynamics of polyatomic molecules.
引用
收藏
页码:6702 / 6708
页数:13
相关论文
共 56 条
[1]   Gaussian Approximation Potentials: The Accuracy of Quantum Mechanics, without the Electrons [J].
Bartok, Albert P. ;
Payne, Mike C. ;
Kondor, Risi ;
Csanyi, Gabor .
PHYSICAL REVIEW LETTERS, 2010, 104 (13)
[2]   Generalized neural-network representation of high-dimensional potential-energy surfaces [J].
Behler, Joerg ;
Parrinello, Michele .
PHYSICAL REVIEW LETTERS, 2007, 98 (14)
[3]   First Principles Neural Network Potentials for Reactive Simulations of Large Molecular and Condensed Systems [J].
Behler, Joerg .
ANGEWANDTE CHEMIE-INTERNATIONAL EDITION, 2017, 56 (42) :12828-12840
[4]   Constructing high-dimensional neural network potentials: A tutorial review [J].
Behler, Joerg .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2015, 115 (16) :1032-1050
[5]   Neural network potential-energy surfaces in chemistry: a tool for large-scale simulations [J].
Behler, Joerg .
PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2011, 13 (40) :17930-17955
[6]   Transferable Atomic Multipole Machine Learning Models for Small Organic Molecules [J].
Bereau, Tristan ;
Andrienko, Denis ;
von Lilienfeld, O. Anatole .
JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2015, 11 (07) :3225-3233
[7]   Bypassing the Kohn-Sham equations with machine learning [J].
Brockherde, Felix ;
Vogt, Leslie ;
Li, Li ;
Tuckerman, Mark E. ;
Burke, Kieron ;
Mueller, Klaus-Robert .
NATURE COMMUNICATIONS, 2017, 8
[8]   Machine learning of accurate energy-conserving molecular force fields [J].
Chmiela, Stefan ;
Tkatchenko, Alexandre ;
Sauceda, Huziel E. ;
Poltavsky, Igor ;
Schuett, Kristof T. ;
Mueller, Klaus-Robert .
SCIENCE ADVANCES, 2017, 3 (05)
[9]   Engineering Surface Critical Behavior of (2+1)-Dimensional O(3) Quantum Critical Points [J].
Ding, Chengxiang ;
Zhang, Long ;
Guo, Wenan .
PHYSICAL REVIEW LETTERS, 2018, 120 (23)
[10]   Nonadiabatic Excited-State Dynamics with Machine Learning [J].
Dral, Pavlo O. ;
Barbatti, Mario ;
Thiel, Walter .
JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2018, 9 (19) :5660-5663