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Machine learning interatomic potential for silicon-nitride (Si3N4) by active learning

Diego Milardovich, Christoph Wilhelmer, Dominic Waldhoer, Lukas Cvitkovich, Ganesh Sivaraman, Tibor Grasser

2023The Journal of Chemical Physics21 citationsDOIOpen Access PDF

Abstract

Silicon nitride (Si3N4) is an extensively used material in the automotive, aerospace, and semiconductor industries. However, its widespread use is in contrast to the scarce availability of reliable interatomic potentials that can be employed to study various aspects of this material on an atomistic scale, particularly its amorphous phase. In this work, we developed a machine learning interatomic potential, using an efficient active learning technique, combined with the Gaussian approximation potential (GAP) method. Our strategy is based on using an inexpensive empirical potential to generate an initial dataset of atomic configurations, for which energies and forces were recalculated with density functional theory (DFT); thereafter, a GAP was trained on these data and an iterative re-training algorithm was used to improve it by learning on-the-fly. When compared to DFT, our potential yielded a mean absolute error of 8 meV/atom in energy calculations for a variety of liquid and amorphous structures and a speed-up of molecular dynamics simulations by 3-4 orders of magnitude, while achieving a first-rate agreement with experimental results. Our potential is publicly available in an open-access repository.

Topics & Concepts

Interatomic potentialMolecular dynamicsAtom (system on chip)Materials scienceDensity functional theorySemiconductorGaussianStatistical physicsSilicon nitrideAmorphous solidComputer scienceComputational physicsChemical physicsSiliconComputational chemistryChemistryPhysicsOptoelectronicsParallel computingOrganic chemistryMachine Learning in Materials ScienceElectronic and Structural Properties of OxidesIon-surface interactions and analysis
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