Nature Communications (Nov 2020)
Bayesian learning of chemisorption for bridging the complexity of electronic descriptors
Abstract
Developing a generalizable model to describe adsorption processes at metal surfaces can be extremely challenging due to complex phenomena involved. Here the authors introduce a Bayesian learning approach based on ab initio data and the d-band model to capture the essential physics of adsorbate–substrate interactions.