Yu Jincheng, Li Jiachen, Zhu Tianyu, Yang Weitao
Department of Chemistry, Duke University, Durham, North Carolina 27708, USA.
Department of Chemistry, Yale University, New Haven, Connecticut 06520, USA.
J Chem Phys. 2025 Mar 7;162(9). doi: 10.1063/5.0251418.
Double excitations are crucial to understanding numerous chemical, physical, and biological processes, but accurately predicting them remains a challenge. In this work, we explore the particle-particle random phase approximation (ppRPA) as an efficient and accurate approach for computing double excitation energies. We benchmark ppRPA using various exchange-correlation functionals for 21 molecular systems and two point defect systems. Our results show that ppRPA with functionals containing appropriate amounts of exact exchange provides accuracy comparable to high-level wave function methods such as CCSDT and CASPT2, with significantly reduced computational cost. Furthermore, we demonstrate the use of ppRPA starting from an excited (N - 2)-electron state calculated by ΔSCF for the first time, as well as its application to double excitations in bulk periodic systems. These findings suggest that ppRPA is a promising tool for the efficient calculation of double and partial double excitation energies in both molecular and bulk systems.
双激发对于理解众多化学、物理和生物过程至关重要,但准确预测它们仍然是一项挑战。在这项工作中,我们探索了粒子-粒子随机相位近似(ppRPA)作为一种计算双激发能的高效且准确的方法。我们使用各种交换关联泛函对21个分子系统和两个点缺陷系统进行了ppRPA基准测试。我们的结果表明,使用包含适量精确交换的泛函的ppRPA提供的精度与诸如CCSDT和CASPT2等高阶波函数方法相当,同时计算成本显著降低。此外,我们首次展示了从通过ΔSCF计算的激发态(N - 2)电子态出发使用ppRPA,以及它在体周期系统双激发中的应用。这些发现表明,ppRPA是在分子和体系统中高效计算双激发能和部分双激发能的有前途的工具。