Litcius/Paper detail

Machine learning with bond information for local structure optimizations in surface science

Estefanía Garijo del Río, Sami Kaappa, José Antonio Garrido Torres, Thomas Bligaard, Karsten W. Jacobsen

2020Technical University of Denmark, DTU Orbit (Technical University of Denmark, DTU)16 citationsOpen Access PDF

Abstract

Local optimization of adsorption systems inherently involves different scales: within the substrate, within the molecule, and between the molecule and the substrate. In this work, we show how the explicit modeling of different characteristics of the bonds in these systems improves the performance of machine learning methods for optimization. We introduce an anisotropic kernel in the Gaussian process regression framework that guides the search for the local minimum, and we show its overall good performance across different types of atomic systems. The method shows a speed-up of up to a factor of two compared with the fastest standard optimization methods on adsorption systems. Additionally, we show that a limited memory approach is not only beneficial in terms of overall computational resources but can also result in a further reduction of energy and force calculations.

Topics & Concepts

BondSurface (topology)Computer scienceArtificial intelligenceBusinessMathematicsGeometryFinanceMachine Learning in Materials ScienceElectronic and Structural Properties of OxidesElectron and X-Ray Spectroscopy Techniques