2021 Annual Meeting
(616b) General Prediction of Reaction Pathway Energetics on Alloy Surfaces Using a Latent-Variable Machine Learning Architecture
Authors
To develop a general model, we used a new machine learning architecture. This architecture partially decouples the adsorbed species from the surface by introducing latent variables, which are a set of implicit surface properties that control how the surface interacts with all adsorbates. Each adsorbate's stability has a different dependence on the latent variables. These latent variables are learned during the fitting process. We create separate sub-models for predicting these latent variables for each surface element, and separate sub-models for how different adsorbates respond to these latent variables. The sub-models are all fit simultaneously. Our framework takes advantage of the fact that elements are discrete entities, and greatly simplifies the huge combinatorial challenge of considering many possible adsorbed species and many possible alloy surfaces. In the end, our method allows efficient prediction of the energetics of entire reaction pathways on alloy surfaces, and can be reused in new contexts (i.e., for a new reaction). We apply this framework to multiple reactions and show how it can quickly elucidate pathways and increase the efficiency of computational catalysis studies.