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使用归一化流计算分子的激发态。

Computing Excited States of Molecules Using Normalizing Flows.

作者信息

Saleh Yahya, Fernández Corral Álvaro, Vogt Emil, Iske Armin, Küpper Jochen, Yachmenev Andrey

机构信息

Department of Mathematics, Universität Hamburg, Bundesstr. 55, 20146 Hamburg, Germany.

Deutsches Elektronen-Synchrotron DESY, Center for Free-Electron Laser Science CFEL, Notkestr. 85, 22607 Hamburg, Germany.

出版信息

J Chem Theory Comput. 2025 May 27;21(10):5221-5229. doi: 10.1021/acs.jctc.5c00590. Epub 2025 May 15.

Abstract

Calculations of highly excited and delocalized molecular vibrational states are computationally challenging tasks, which strongly depend on the choice of coordinates for describing vibrational motions. We introduce a new method that leverages normalizing flows, i.e, parametrized invertible functions, to learn optimal vibrational coordinates that satisfy the variational principle. This approach produces coordinates tailored to the vibrational problem at hand, significantly increasing the accuracy and enhancing the basis set convergence of the calculated energy spectrum. The efficiency of the method is demonstrated in calculations of the 100 lowest excited vibrational states of HS, HCO, and HCN/HNC. The method effectively captures the essential vibrational behavior of molecules by enhancing the separability of the Hamiltonian and hence allows for an effective assignment of approximate quantum numbers. We demonstrate that the optimized coordinates are transferable across different levels of basis set truncation, enabling a cost-efficient protocol for computing vibrational spectra of high-dimensional systems.

摘要

高激发和离域分子振动态的计算是具有计算挑战性的任务,这在很大程度上取决于描述振动运动的坐标选择。我们引入了一种新方法,该方法利用归一化流,即参数化可逆函数,来学习满足变分原理的最优振动坐标。这种方法产生了针对手头振动问题量身定制的坐标,显著提高了准确性并增强了计算能谱的基组收敛性。该方法的效率在HS、HCO和HCN/HNC的100个最低激发振动态的计算中得到了证明。该方法通过增强哈密顿量的可分离性有效地捕捉了分子的基本振动行为,因此允许有效地分配近似量子数。我们证明了优化后的坐标可在不同级别的基组截断之间转移,从而实现了一种计算高维系统振动光谱的经济高效方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9549/12120919/9668088287e3/ct5c00590_0001.jpg

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