An Accurate and Transferable Machine Learning Potential for Carbon
Patrick Rowe, Volker L Deringer, Piero Gasparotto, G\'abor Cs\'anyi, and Angelos Michaelides

TL;DR
This paper introduces GAP-20, a machine learning potential for carbon that achieves near ab initio accuracy across various carbon structures, enabling efficient and precise atomistic simulations.
Contribution
The authors develop and validate a transferable ML potential for carbon that combines flexibility for amorphous forms with high accuracy for crystalline structures, using the GAP methodology.
Findings
GAP-20 accurately predicts lattice parameters and phonon dispersions.
The potential reliably models defect formation energies and surface reconstructions.
Dispersion interactions are effectively incorporated, enhancing multilayer carbon simulations.
Abstract
We present an accurate machine learning (ML) model for atomistic simulations of carbon, constructed using the Gaussian approximation potential (GAP) methodology. The potential, named GAP-20, describes the properties of the bulk crystalline and amorphous phases, crystal surfaces and defect structures with an accuracy approaching that of direct ab initio simulation, but at a significantly reduced cost. We combine structural databases for amorphous carbon and graphene, which we extend substantially by adding suitable configurations, for example, for defects in graphene and other nanostructures. The final potential is fitted to reference data computed using the optB88-vdW density functional theory (DFT) functional. Dispersion interactions, which are crucial to describe multilayer carbonaceous materials, are therefore implicitly included. We additionally account for long-range dispersion…
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