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Abstract
The Hohenberg-Kohn theorem of density-functional theory establishes the existence of a bijection between the ground-state electron density and the external potential of a many-body system. This guarantees a one-to-one map from the electron density to all observables of interest including electronic excited-state energies. Time-Dependent Density-Functional Theory (TDDFT) provides one framework to resolve this map; however, the approximations inherent in practical TDDFT calculations, together with their computational expense, motivate finding a cheaper, more direct map for electronic excitations. Here, we show that determining density and energy functionals via machine learning allows the equations of TDDFT to be bypassed. The framework we introduce is used to perform the first excited-state molecular dynamics simulations with a machine-learned functional on malonaldehyde and correctly capture the kinetics of its excited-state intramolecular proton transfer, allowing insight into how mechanical constraints can be used to control the proton transfer reaction in this molecule. This development opens the door to using machine-learned functionals for highly efficient excited-state dynamics simulations.
Density functional theory provides a formal map from the electron density to all observables of interest of a many-body system; however, maps for electronic excited states are unknown. Here, the authors demonstrate a data-driven machine learning approach for constructing multistate functionals.
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1 NYU Shanghai, Shanghai, China (GRID:grid.449457.f) (ISNI:0000 0004 5376 0118); NYU-ECNU Center for Computational Chemistry at NYU Shanghai, Shanghai, China (GRID:grid.449457.f) (ISNI:0000 0004 5376 0118); New York University, Department of Chemistry, New York, USA (GRID:grid.137628.9) (ISNI:0000 0004 1936 8753)
2 New York University, Department of Chemistry, New York, USA (GRID:grid.137628.9) (ISNI:0000 0004 1936 8753)
3 NYU-ECNU Center for Computational Chemistry at NYU Shanghai, Shanghai, China (GRID:grid.449457.f) (ISNI:0000 0004 5376 0118); New York University, Department of Chemistry, New York, USA (GRID:grid.137628.9) (ISNI:0000 0004 1936 8753); Simons Center for Computational Physical Chemistry at New York University, New York, USA (GRID:grid.137628.9) (ISNI:0000 0004 1936 8753); Courant Institute of Mathematical Science, New York University, New York, USA (GRID:grid.482020.c) (ISNI:0000 0001 1089 179X)