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Learning Neural Free-Energy Functionals with Pair-Correlation Matching

J.G. Dijkman, Marjolein Dijkstra, René van Roij, Max Welling, Jan-Willem van de Meent, Bernd Ensing

2025Physical Review Letters15 citationsDOIOpen Access PDF

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.

Topics & Concepts

Matching (statistics)CorrelationArtificial neural networkEnergy (signal processing)Statistical physicsPhysicsComputer scienceArtificial intelligenceQuantum mechanicsMathematicsStatisticsGeometryNeural Networks and ApplicationsMachine Learning in Materials ScienceHydrocarbon exploration and reservoir analysis
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