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

被引:24
|
作者
Cats, Peter [1 ]
Kuipers, Sander [1 ]
de Wind, Sacha [1 ]
van Damme, Robin [2 ]
Coli, Gabriele M. [2 ]
Dijkstra, Marjolein [2 ]
van Roij, Rene [1 ]
机构
[1] Univ Utrecht, Inst Theoret Phys, Princetonpl 5, NL-3584 CC Utrecht, Netherlands
[2] Debye Inst Nanomat Sci, Soft Condensed Matter, Princetonpl 1, NL-3584 CC Utrecht, Netherlands
关键词
FUNDAMENTAL MEASURE-THEORY; HARD-SPHERE MIXTURES; EQUATION-OF-STATE; FLUIDS; MODEL;
D O I
10.1063/5.0042558
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
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.
引用
收藏
页数:11
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