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An accurate and transferable machine learning potential for carbon

Patrick Rowe, Volker L. Deringer, Piero Gasparotto, Gábor Csányi, Angelos Michaelides

2020The Journal of Chemical Physics269 citationsDOIOpen Access PDF

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 interactions using a semianalytical two-body term and show that an improved model can be obtained through an optimization of the many-body smooth overlap of atomic positions descriptor. We rigorously test the potential on lattice parameters, bond lengths, formation energies, and phonon dispersions of numerous carbon allotropes. We compare the formation energies of an extensive set of defect structures, surfaces, and surface reconstructions to DFT reference calculations. The present work demonstrates the ability to combine, in the same ML model, the previously attained flexibility required for amorphous carbon [V. L. Deringer and G. Csányi, Phys. Rev. B 95, 094203 (2017)] with the high numerical accuracy necessary for crystalline graphene [Rowe et al., Phys. Rev. B 97, 054303 (2018)], thereby providing an interatomic potential that will be applicable to a wide range of applications concerning diverse forms of bulk and nanostructured carbon.

Topics & Concepts

GrapheneAmorphous solidInteratomic potentialPhononAb initioMaterials scienceDensity functional theoryCarbon fibersGaussianCrystal structure predictionDispersion (optics)Amorphous carbonLattice (music)Flexibility (engineering)Statistical physicsAlgorithmArtificial intelligenceAb initio quantum chemistry methodsMachine learningReference dataComputer scienceWork (physics)Crystal structureComputationGaussian processTest setRange (aeronautics)Crystal (programming language)Molecular dynamicsSet (abstract data type)Chemical physicsHybrid functionalComputational physicsExperimental dataCoherent potential approximationPotential methodMachine Learning in Materials ScienceAdvanced Electron Microscopy Techniques and ApplicationsAdvanced Physical and Chemical Molecular Interactions
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