Abstract
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 MCPDFT
calculations to date have been unoptimized translations of generalized gradient
approximations (GGAs) of Kohn–Sham density functional theory (KS-DFT). A hybrid MCPDFT
has also been developed, in which one includes a fraction of the CASSCF 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-GGA 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 new database containing a wide variety
of systems with diverse characters. The resulting hybrid meta functional is called the MC23
functional. We find that MC23 has equally improved performance as compared to KS-DFT
functionals for both strongly and weakly correlated systems. We recommend MC23 for future
MC-PDFT calculations.
Supplementary weblinks
Title
Data used in MC23 article
Description
Cartesian coordinates, wave function files, absolute energies, and the mapping of system names
to energy differences for OpenMolcas and Gaussian 16 calculations
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Available software
Description
The developer’s branch of OpenMolcas for calculations with MC23 is available open source on
GitLab at https://gitlab.com/qq270814845/OpenMolcas commit
dbe66bdde53f6d0bc4e9e5bcc0243922b3559a66.
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