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A machine-learned interatomic potential for silica and its relation to empirical models

Linus C. Erhard, Jochen Rohrer, Karsten Albe, Volker L. Deringer

2022npj Computational Materials96 citationsDOIOpen Access PDF

Abstract

Abstract Silica (SiO 2 ) is an abundant material with a wide range of applications. Despite much progress, the atomistic modelling of the different forms of silica has remained a challenge. Here we show that by combining density-functional theory at the SCAN functional level with machine-learning-based interatomic potential fitting, a range of condensed phases of silica can be accurately described. We present a Gaussian approximation potential model that achieves high accuracy for the thermodynamic properties of the crystalline phases, and we compare its performance (and performance–cost trade-off) with that of multiple empirically fitted interatomic potentials for silica. We also include amorphous phases, assessing the ability of the potentials to describe structures of melt-quenched glassy silica, their energetic stability, and the high-pressure structural transition to a mainly sixfold-coordinated phase. We suggest that rather than standing on their own, machine-learned potentials for silica may be used in conjunction with suitable empirical models, each having a distinct role and complementing the other, by combining the advantages of the long simulation times afforded by empirical potentials and the near-quantum-mechanical accuracy of machine-learned potentials. This way, our work is expected to advance atomistic simulations of this key material and to benefit further computational studies in the field.

Topics & Concepts

Interatomic potentialWork (physics)Statistical physicsDensity functional theoryRange (aeronautics)GaussianAmorphous silicaComputer scienceMaterials scienceForce field (fiction)Silica glassMachine learningChemical physicsArtificial intelligenceMolecular dynamicsThermodynamicsComputational chemistryChemistryPhysicsEngineeringChemical engineeringComposite materialMachine Learning in Materials ScienceCatalysis and Oxidation ReactionsX-ray Diffraction in Crystallography
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