Machine Learning-Based Prediction of Activation Energies for Chemical Reactions on Metal Surfaces.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

In computational surface catalysis, the calculation of activation energies of chemical reactions is expensive, which, in many cases, limits our ability to understand complex reaction networks. Here, we present a universal, machine learning-based approach for the prediction of activation energies for reactions of C-, O-, and H-containing molecules on transition metal surfaces. We rely on generalized Bronsted-Evans-Polanyi relationships in combination with machine learning-based multiparameter regression techniques to train our model for reactions included in the University of Arizona Reaction database. In our best approach, we find a mean absolute error for activation energies within our test set of 0.14 eV if the reaction energy is known and 0.19 eV if the reaction energy is unknown. We expect that this methodology will often replace the explicit calculation of activation energies within surface catalysis when exploring large reaction networks or screening catalysts for desirable properties in the future.

Authors

  • Daniel J Hutton
    Department of Biosystems Engineering, The University of Arizona, 1177 E. Fourth St., Tucson, Arizona 85719, United States.
  • Kari E Cordes
    Department of Biosystems Engineering, The University of Arizona, 1177 E. Fourth St., Tucson, Arizona 85719, United States.
  • Carine Michel
    CNRS, ENS de Lyon, LCH, UMR 5182, 69342 Lyon cedex 07, France.
  • Florian Göltl
    Department of Biosystems Engineering, The University of Arizona, 1177 E. Fourth St., Tucson, Arizona 85719, United States.