Bao Jie J, Zhang Dayou, Zhang Shaoting, Gagliardi Laura, Truhlar Donald G
Department of Chemistry, Chemical Theory Center, University of Minnesota, Minneapolis, MN 55455-0431.
Minnesota Supercomputing Institute, University of Minnesota, Minneapolis, MN 55455-0431.
Proc Natl Acad Sci U S A. 2025 Jan 7;122(1):e2419413121. doi: 10.1073/pnas.2419413121. Epub 2024 Dec 30.
Multiconfiguration pair-density functional theory (MC-PDFT) was proposed a decade ago, but it is still in the early stage of density functional development. MC-PDFT uses functionals that are called on-top functionals; they depend on the density and the on-top pair density. Most MC-PDFT calculations to date have been unoptimized translations of generalized gradient approximations (GGAs) of Kohn-Sham density functional theory (KS-DFT). A hybrid MC-PDFT has also been developed, in which one includes a fraction of the complete active space self-consistent-field wave function energy in the total energy. Meta-GGA functionals, which use kinetic-energy densities in addition to GGA ingredients, have shown higher accuracy than GGAs in KS-DFT, yet the translation of meta-GGAs has not been previously proposed for MC-PDFT. In this paper, we propose a way to include kinetic energy density in a hybrid on-top functional for MC-PDFT, and we optimize the parameters of the resulting functional by training with a database developed as part of the present work that contains a wide variety of systems with diverse characters. The resulting hybrid meta functional is called the MC23 functional. We find that MC23 has improved performance as compared to KS-DFT functionals for both strongly and weakly correlated systems. We recommend MC23 for future MC-PDFT calculations.
多组态对密度泛函理论(MC-PDFT)是十年前提出的,但仍处于密度泛函发展的早期阶段。MC-PDFT使用的泛函被称为顶对泛函;它们依赖于密度和顶对密度。迄今为止,大多数MC-PDFT计算都是对Kohn-Sham密度泛函理论(KS-DFT)广义梯度近似(GGA)的未优化转换。还开发了一种混合MC-PDFT,其中在总能量中包含了一部分完全活性空间自洽场波函数能量。除了GGA成分外还使用动能密度的元GGA泛函,在KS-DFT中已显示出比GGA更高的精度,但此前尚未有人提出将元GGA转换用于MC-PDFT。在本文中,我们提出了一种在MC-PDFT的混合顶对泛函中包含动能密度的方法,并通过使用作为本工作一部分开发的数据库进行训练来优化所得泛函的参数,该数据库包含各种具有不同特性的系统。所得的混合元泛函称为MC23泛函。我们发现,对于强关联和弱关联系统,MC23与KS-DFT泛函相比都有改进的性能。我们推荐在未来的MC-PDFT计算中使用MC23。