Nature Communications (Oct 2019)
Statistical learning goes beyond the d-band model providing the thermochemistry of adsorbates on transition metals
Abstract
Assessing catalytic mechanisms using DFT calculations greatly aids catalyst design, but is impractical for large molecules. Here the authors develop a statistical learning-based thermochemical model for estimating adsorption of organics onto metals, retaining DFT accuracy while reducing the number of calculations by a factor of 20.