A new active learning approach for adsorbate-substrate structural elucidation in silico.

Journal: Journal of molecular modeling
Published Date:

Abstract

Adsorbate interactions with substrates (e.g. surfaces and nanoparticles) are fundamental for several technologies, such as functional materials, supramolecular chemistry, and solvent interactions. However, modeling these kinds of systems in silico, such as finding the optimum adsorption geometry and energy, is challenging, due to the huge number of possibilities of assembling the adsorbate on the surface. In the current work, we have developed an artificial intelligence (AI) approach based on an active learning (AL) method for adsorption optimization on the surface of materials. AL uses machine learning (ML) regression algorithms and their uncertainties to make a decision (based on a policy) for the next unexplored structures to be computed, increasing, though, the probability of finding the global minimum with a small number of calculations. The methodology allows an accurate and automated structural elucidation of the adsorbate on the surface, based on the minimization of the total electronic energy. The new AL method for adsorption optimization was developed and implemented in the quantum machine learning software/agent for material design and discovery (QMLMaterial) program and was applied for C@TiO anatase (101). It marks another software extension with a new feature in addition to the automatic structural elucidation of defects in materials and of nanoparticles as well. SCC-DFTB calculations were used to build the complex search surfaces with a reasonably low computational cost. An artificial neural network (NN) was employed in the AL framework evaluated together with two uncertainty quantification methods: K-fold cross-validation and non-parametric bootstrap (BS) resampling. Also, two different acquisition functions for decision-making were used: expected improvement (EI) and the lower confidence bound (LCB).

Authors

  • Maicon Pierre Lourenço
    Departamento de Química e Física - Centro de Ciências Exatas, Naturais e da Saúde - CCENS - Universidade Federal do Espírito Santo, 29500-000, Alegre, Espírito Santo, Brasil. maiconpl01@gmail.com.
  • Lizandra Barrios Herrera
    Department of Chemistry, Department of Physics and Astronomy, Quantum Alberta, CMS Centre for Molecular Simulation, IQST Institute for Quantum Science and Technology, University of Calgary, 2500 University Drive NW, Calgary, AB, T2N 1N4, Canada.
  • Jiří Hostaš
    Department of Chemistry, Department of Physics and Astronomy, Quantum Alberta, CMS Centre for Molecular Simulation, IQST Institute for Quantum Science and Technology, University of Calgary, 2500 University Drive NW, Calgary, AB, T2N 1N4, Canada.
  • Patrizia Calaminici
    Departamento de Química, CINVESTAV, Av. Instituto Politécnico Nacional 2508, AP 14-740, México City, D.F., 07000, México.
  • Andreas M Köster
    Departamento de Química, CINVESTAV, Av. Instituto Politécnico Nacional 2508, AP 14-740, México City, D.F., 07000, México.
  • Alain Tchagang
    Digital Technologies Research Centre, National Research Council of Canada, 1200 Montréal Road, Ottawa, ON, K1A 0R6, Canada.
  • Dennis R Salahub
    Department of Chemistry, Department of Physics and Astronomy, Quantum Alberta, CMS Centre for Molecular Simulation, IQST Institute for Quantum Science and Technology, University of Calgary, 2500 University Drive NW, Calgary, AB, T2N 1N4, Canada.