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Why neural functionals suit statistical mechanics

Florian Sammüller, Sophie Hermann, Matthias Schmidt

2024Journal of Physics Condensed Matter19 citationsDOIOpen Access PDF

Abstract

Abstract We describe recent progress in the statistical mechanical description of many-body systems via machine learning combined with concepts from density functional theory and many-body simulations. We argue that the neural functional theory by Sammüller et al (2023 Proc. Natl Acad. Sci. 120 e2312484120) gives a functional representation of direct correlations and of thermodynamics that allows for thorough quality control and consistency checking of the involved methods of artificial intelligence. Addressing a prototypical system we here present a pedagogical application to hard core particle in one spatial dimension, where Percus’ exact solution for the free energy functional provides an unambiguous reference. A corresponding standalone numerical tutorial that demonstrates the neural functional concepts together with the underlying fundamentals of Monte Carlo simulations, classical density functional theory, machine learning, and differential programming is available online at https://github.com/sfalmo/NeuralDFT-Tutorial .

Topics & Concepts

Statistical mechanicsStatistical physicsArtificial neural networkPhysicsClassical mechanicsComputer scienceArtificial intelligenceMachine Learning in Materials ScienceNeural Networks and ApplicationsProtein Structure and Dynamics