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Kohn–Sham accuracy from orbital-free density functional theory via Δ-machine learning

Shashikant Kumar, Xin Jing, John E. Pask, Andrew J. Medford, Phanish Suryanarayana

2023The Journal of Chemical Physics13 citationsDOIOpen Access PDF

Abstract

We present a Δ-machine learning model for obtaining Kohn-Sham accuracy from orbital-free density functional theory (DFT) calculations. In particular, we employ a machine-learned force field (MLFF) scheme based on the kernel method to capture the difference between Kohn-Sham and orbital-free DFT energies/forces. We implement this model in the context of on-the-fly molecular dynamics simulations and study its accuracy, performance, and sensitivity to parameters for representative systems. We find that the formalism not only improves the accuracy of Thomas-Fermi-von Weizsäcker orbital-free energies and forces by more than two orders of magnitude but is also more accurate than MLFFs based solely on Kohn-Sham DFT while being more efficient and less sensitive to model parameters. We apply the framework to study the structure of molten Al0.88Si0.12, the results suggesting no aggregation of Si atoms, in agreement with a previous Kohn-Sham study performed at an order of magnitude smaller length and time scales.

Topics & Concepts

Density functional theoryFormalism (music)Kohn–Sham equationsKernel (algebra)Orbital-free density functional theoryPhysicsForce field (fiction)Context (archaeology)Time-dependent density functional theoryStatistical physicsComputer scienceQuantum mechanicsMathematicsPaleontologyVisual artsArtMusicalCombinatoricsBiologyMachine Learning in Materials ScienceAdvanced Chemical Physics StudiesX-ray Diffraction in Crystallography
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