Learning Neural Free-Energy Functionals with Pair-Correlation Matching
Publication date
2025-02-07
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Abstract
The intrinsic Helmholtz free-energy functional, the centerpiece of classical density functional theory, is at best only known approximately for 3D systems. Here we introduce a method for learning a neural-network approximation of this functional by exclusively training on a dataset of radial distribution functions, circumventing the need to sample costly heterogeneous density profiles in a wide variety of external potentials. For a supercritical Lennard-Jones system with planar symmetry, we demonstrate that the learned neural free-energy functional accurately predicts inhomogeneous density profiles under various complex external potentials obtained from simulations.
Keywords
General Physics and Astronomy
Citation
Dijkman, J, Dijkstra, M, Van Roij, R, Welling, M, Van De Meent, J W & Ensing, B 2025, 'Learning Neural Free-Energy Functionals with Pair-Correlation Matching', Physical Review Letters, vol. 134, no. 5, 056103. https://doi.org/10.1103/PhysRevLett.134.056103