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Data-efficient iterative training of Gaussian approximation potentials: Application to surface structure determination of rutile IrO2 and RuO2

Jakob Timmermann, Yonghyuk Lee, Carsten G. Staacke, Johannes T. Margraf, Christoph Scheurer, Karsten Reuter

2021The Journal of Chemical Physics40 citationsDOI

Abstract

Machine-learning interatomic potentials, such as Gaussian Approximation Potentials (GAPs), constitute a powerful class of surrogate models to computationally involved first-principles calculations. At a similar predictive quality but significantly reduced cost, they could leverage otherwise barely tractable extensive sampling as in global surface structure determination (SSD). This efficiency is jeopardized though, if an a priori unknown structural and chemical search space as in SSD requires an excessive number of first-principles data for the GAP training. To this end, we present a general and data-efficient iterative training protocol that blends the creation of new training data with the actual surface exploration process. Demonstrating this protocol with the SSD of low-index facets of rutile IrO2 and RuO2, the involved simulated annealing on the basis of the refining GAP identifies a number of unknown terminations even in the restricted sub-space of (1 × 1) surface unit cells. Particularly in an O-poor environment, some of these, then metal-rich terminations, are thermodynamically most stable and are reminiscent of complexions as discussed for complex ceramic materials.

Topics & Concepts

Leverage (statistics)Computer scienceGaussianSimulated annealingRutileInteratomic potentialAlgorithmMachine learningMolecular dynamicsChemistryComputational chemistryOrganic chemistryMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyElectronic and Structural Properties of Oxides
Data-efficient iterative training of Gaussian approximation potentials: Application to surface structure determination of rutile IrO2 and RuO2 | Litcius