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通过最小化梯度平方实现激发态轨道优化:通用方法及通过密度泛函理论应用于单重和双重激发态

Excited State Orbital Optimization via Minimizing the Square of the Gradient: General Approach and Application to Singly and Doubly Excited States via Density Functional Theory.

作者信息

Hait Diptarka, Head-Gordon Martin

机构信息

Kenneth S. Pitzer Center for Theoretical Chemistry, Department of Chemistry, University of California, Berkeley, California 94720, United States.

Chemical Sciences Division, Lawrence Berkeley National Laboratory, Berkeley, California 94720, United States.

出版信息

J Chem Theory Comput. 2020 Mar 10;16(3):1699-1710. doi: 10.1021/acs.jctc.9b01127. Epub 2020 Feb 17.

Abstract

We present a general approach to converge excited state solutions to quantum chemistry orbital optimization process, without the risk of variational collapse. The resulting square gradient minimization (SGM) approach only requires analytic energy/Lagrangian orbital gradients and merely costs 3 times as much as ground state orbital optimization (per iteration), when implemented via a finite difference approach. SGM is applied to both single determinant ΔSCF and spin-purified restricted open-shell Kohn-Sham (ROKS) approaches to study the accuracy of orbital optimized DFT excited states. It is found that SGM can converge challenging states where the maximum overlap method (MOM) or analogues either collapse to the ground state or fail to converge. We also report that ΔSCF/ROKS predict highly accurate excitation energies for doubly excited states (which are inaccessible via TDDFT). Singly excited states obtained via ROKS are also found to be quite accurate, especially for Rydberg states that frustrate (semi)local TDDFT. Our results suggest that orbital optimized excited state DFT methods can be used to push past the limitations of TDDFT to doubly excited, charge-transfer, or Rydberg states, making them a useful tool for the practical quantum chemist's toolbox for studying excited states in large systems.

摘要

我们提出了一种通用方法,可将激发态解收敛到量子化学轨道优化过程中,而不存在变分崩溃的风险。由此产生的平方梯度最小化(SGM)方法仅需要解析能量/拉格朗日轨道梯度,并且通过有限差分方法实现时,每次迭代的成本仅为基态轨道优化的3倍。SGM应用于单行列式ΔSCF和自旋纯化的受限开壳Kohn-Sham(ROKS)方法,以研究轨道优化DFT激发态的准确性。研究发现,SGM可以收敛具有挑战性的状态,在这些状态下,最大重叠方法(MOM)或类似方法要么坍缩到基态,要么无法收敛。我们还报告说,ΔSCF/ROKS预测双激发态的激发能非常准确(通过TDDFT无法获得)。通过ROKS获得的单激发态也被发现相当准确,特别是对于使(半)局域TDDFT受挫的里德堡态。我们的结果表明,轨道优化激发态DFT方法可用于突破TDDFT对双激发、电荷转移或里德堡态的限制,使其成为实际量子化学家研究大系统激发态的实用工具箱中的一个有用工具。

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