Data-Driven Machine Learning for Understanding Surface Structures of Heterogeneous Catalysts

Angew Chem Int Ed Engl. 2023 Feb 20;62(9):e202216383. doi: 10.1002/anie.202216383. Epub 2023 Jan 9.

Abstract

The design of heterogeneous catalysts is necessarily surface-focused, generally achieved via optimization of adsorption energy and microkinetic modelling. A prerequisite is to ensure the adsorption energy is physically meaningful is the stable existence of the conceived active-site structure on the surface. The development of improved understanding of the catalyst surface, however, is challenging practically because of the complex nature of dynamic surface formation and evolution under in-situ reactions. We propose therefore data-driven machine-learning (ML) approaches as a solution. In this Minireview we summarize recent progress in using machine-learning to search and predict (meta)stable structures, assist operando simulation under reaction conditions and micro-environments, and critically analyze experimental characterization data. We conclude that ML will become the new norm to lower costs associated with discovery and design of optimal heterogeneous catalysts.

Keywords: Heterogeneous Catalysts; In-Situ Characterization; Machine Learning (ML); Operando Computation; Surface Structures.

Publication types

  • Review