Machine-learning free-energy functionals using density profiles from simulations

Publication date

2021-03-01

Authors

Cats, PeterISNI 0000000492859938
Kuipers, SanderISNI 0000000524017445
De Wind, Sacha
van Damme, RobinISNI 0000000492796287
Coli, Gabriele M.ISNI 0000000518030459
Dijkstra, MarjoleinISNI 0000000358257928
van Roij, R.H.H.G.ISNI 0000000392993654

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Advisors

Supervisors

Document Type

Article
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cc_by

Abstract

The formally exact framework of equilibrium Density Functional Theory (DFT) is capable of simultaneously and consistently describing thermodynamic and structural properties of interacting many-body systems in arbitrary external potentials. In practice, however, DFT hinges on approximate (free-)energy functionals from which density profiles (and hence the thermodynamic potential) follow via an Euler-Lagrange equation. Here, we explore a relatively simple Machine-Learning (ML) approach to improve the standard mean-field approximation of the excess Helmholtz free-energy functional of a 3D Lennard-Jones system at a supercritical temperature. The learning set consists of density profiles from grand-canonical Monte Carlo simulations of this system at varying chemical potentials and external potentials in a planar geometry only. Using the DFT formalism, we nevertheless can extract not only very accurate 3D bulk equations of state but also radial distribution functions using the Percus test-particle method. Unfortunately, our ML approach did not provide very reliable Ornstein-Zernike direct correlation functions for small distances.

Keywords

General Materials Science, General Engineering

Citation

Cats, P, Kuipers, S, De Wind, S, Van Damme, R, Coli, G M, Dijkstra, M & Van Roij, R 2021, 'Machine-learning free-energy functionals using density profiles from simulations', APL Materials, vol. 9, no. 3, 031109. https://doi.org/10.1063/5.0042558