Thawed Gaussian Wavepacket Dynamics with Δ-Machine-Learned Potentials.

IF 2.7 2区 化学 Q3 CHEMISTRY, PHYSICAL The Journal of Physical Chemistry A Pub Date : 2024-10-11 DOI:10.1021/acs.jpca.4c02979
Rami Gherib, Ilya G Ryabinkin, Scott N Genin
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Abstract

A method for performing variable-width (thawed) Gaussian wavepacket (GWP) variational dynamics on machine-learned potentials is presented. Instead of fitting the potential energy surface (PES), the anharmonic correction to the global harmonic approximation (GHA) is fitted using kernel ridge regression─this is a Δ-machine learning approach. The training set consists of energy differences between ab initio electronic energies and values given by the GHA. The learned potential is subsequently used to propagate a single thawed GWP by using the time-dependent variational principle to compute the autocorrelation function, which provides direct access to vibronic spectra via its Fourier transform. We applied the developed method to simulate the photoelectron spectrum of ammonia and found excellent agreement between theoretical and experimental spectra. We show that fitting the anharmonic corrections requires a smaller training set as compared to fitting total electronic energies. We also demonstrate that our approach allows to reduce the dimensionality of the nuclear space used to scan the PES when constructing the training set. Thus, only the degrees of freedom associated with large-amplitude motions need to be treated with Δ-machine learning, which paves a way for reliable simulations of vibronic spectra of large floppy molecules.

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解冻高斯波包动力学与 Δ 机器学习势能
本文介绍了一种对机器学习的势能进行变宽(解冻)高斯波包(GWP)变分法动力学处理的方法。不是拟合势能面(PES),而是使用核岭回归拟合全局谐波近似(GHA)的非谐波修正--这是一种Δ机器学习方法。训练集包括 ab initio 电子能量与 GHA 给定值之间的能量差。随后,利用随时间变化的变分原理计算自相关函数,通过傅里叶变换直接获取振子光谱,从而利用学习到的势能传播单个解冻 GWP。我们将所开发的方法用于模拟氨的光电子能谱,发现理论能谱与实验能谱之间存在极好的一致性。我们发现,与拟合总电子能量相比,拟合非谐波修正需要较小的训练集。我们还证明,在构建训练集时,我们的方法可以降低用于扫描 PES 的核空间维度。因此,只需要用Δ机器学习处理与大振幅运动相关的自由度,这就为可靠地模拟大型软分子的振动光谱铺平了道路。
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来源期刊
The Journal of Physical Chemistry A
The Journal of Physical Chemistry A 化学-物理:原子、分子和化学物理
CiteScore
5.20
自引率
10.30%
发文量
922
审稿时长
1.3 months
期刊介绍: The Journal of Physical Chemistry A is devoted to reporting new and original experimental and theoretical basic research of interest to physical chemists, biophysical chemists, and chemical physicists.
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