Department of Chemistry, Case Western Reserve University, 10800 Euclid Ave., Cleveland, Ohio 44106, USA.
J Chem Phys. 2020 Nov 7;153(17):174109. doi: 10.1063/5.0024372.
Trajectory surface hopping simulations of photochemical reactions are a powerful and increasingly important tool to unravel complex photochemical reactivity. Within surface hopping, electronic transitions are mimicked by stochastic hops between electronic potential surfaces. Thus, statistical sampling is an inescapable component of trajectory-surface-hopping-based nonadiabatic molecular dynamics methods. However, the standard sampling strategy inhibits computational reproducibility, limits predictability, and results in trajectories that are overly sensitive to numerical parameters like the time step. We describe an equivalent approach to sampling electronic transitions within fewest switches surface hopping (FSSH) in which hops are decided in terms of the cumulative probability (FSSH-c) as opposed to the usual prescription, which is in terms of the instantaneous conditional probability (FSSH-i). FSSH-c is statistically equivalent to FSSH-i and can be implemented from trivial modifications to an existing surface hopping algorithm but has several key advantages: (i) a single trajectory is fully specified by just a handful of random numbers, (ii) all hopping decisions are independent of the time step such that the convergence behavior of individual trajectories can be explored, and (iii) alternative integral-based sampling schemes are enabled. In addition, we show that the conventional hopping probability overestimates the hopping rate and propose a simple scaling correction as a fix. Finally, we demonstrate these advantages numerically on model scattering problems.
光化学反应的轨迹表面跳跃模拟是揭示复杂光化学反应性的强大且日益重要的工具。在表面跳跃中,电子跃迁通过电子势能面之间的随机跳跃来模拟。因此,统计抽样是基于轨迹表面跳跃的非绝热分子动力学方法中不可避免的组成部分。然而,标准抽样策略会抑制计算的可重复性、限制可预测性,并导致轨迹对数值参数(如时间步长)过于敏感。我们描述了一种在少数跳跃表面跳跃(FSSH)中对电子跃迁进行抽样的等效方法,其中跳跃是根据累积概率(FSSH-c)而不是通常的条件概率(FSSH-i)来决定的。FSSH-c 在统计学上与 FSSH-i 等效,并且可以通过对现有表面跳跃算法进行微不足道的修改来实现,但具有几个关键优势:(i)仅用少数几个随机数就可以完全指定单个轨迹,(ii)所有跳跃决策都与时间步长无关,因此可以探索单个轨迹的收敛行为,(iii)启用替代的基于积分的抽样方案。此外,我们表明传统的跳跃概率高估了跳跃率,并提出了一种简单的缩放修正作为解决方案。最后,我们在模型散射问题上数值证明了这些优势。