Hu Deping, Xie Yu, Li Xusong, Li Lingyue, Lan Zhenggang
CAS Key Laboratory of Biobased Materials, Qingdao Institute of Bioenergy and Bioprocess Technology , Chinese Academy of Sciences , Qingdao 266101 , China.
University of Chinese Academy of Sciences , Beijing 100049 , China.
J Phys Chem Lett. 2018 Jun 7;9(11):2725-2732. doi: 10.1021/acs.jpclett.8b00684. Epub 2018 May 10.
We discuss a theoretical approach that employs machine learning potential energy surfaces (ML-PESs) in the nonadiabatic dynamics simulation of polyatomic systems by taking 6-aminopyrimidine as a typical example. The Zhu-Nakamura theory is employed in the surface hopping dynamics, which does not require the calculation of the nonadiabatic coupling vectors. The kernel ridge regression is used in the construction of the adiabatic PESs. In the nonadiabatic dynamics simulation, we use ML-PESs for most geometries and switch back to the electronic structure calculations for a few geometries either near the S/S conical intersections or in the out-of-confidence regions. The dynamics results based on ML-PESs are consistent with those based on CASSCF PESs. The ML-PESs are further used to achieve the highly efficient massive dynamics simulations with a large number of trajectories. This work displays the powerful role of ML methods in the nonadiabatic dynamics simulation of polyatomic systems.
我们以6-氨基嘧啶为典型示例,讨论一种在多原子体系非绝热动力学模拟中采用机器学习势能面(ML-PESs)的理论方法。在表面跳跃动力学中采用了朱-中村理论,该理论无需计算非绝热耦合矢量。在绝热势能面的构建中使用了核岭回归。在非绝热动力学模拟中,对于大多数几何构型我们使用ML-PESs,而对于靠近S/S锥形交叉点或处于置信区间之外的少数几何构型则切换回电子结构计算。基于ML-PESs的动力学结果与基于CASSCF势能面的结果一致。ML-PESs还被用于实现具有大量轨迹的高效大规模动力学模拟。这项工作展示了机器学习方法在多原子体系非绝热动力学模拟中的强大作用。