Litcius/Paper detail

Machine-learning atomic simulation for heterogeneous catalysis

Dongxiao Chen, Cheng Shang, Zhi‐Pan Liu

2023npj Computational Materials83 citationsDOIOpen Access PDF

Abstract

Abstract Heterogeneous catalysis is at the heart of chemistry. New theoretical methods based on machine learning (ML) techniques that emerged in recent years provide a new avenue to disclose the structures and reaction in complex catalytic systems. Here we review briefly the history of atomic simulations in catalysis and then focus on the recent trend shifting toward ML potential calculations. The advanced methods developed by our group are outlined to illustrate how complex structures and reaction networks can be resolved using the ML potential in combination with efficient global optimization methods. The future of atomic simulation in catalysis is outlooked.

Topics & Concepts

CatalysisComputer scienceBiochemical engineeringNanotechnologyReaction conditionsChemistryMaterials scienceEngineeringOrganic chemistryMachine Learning in Materials ScienceCatalysis and Oxidation ReactionsElectrocatalysts for Energy Conversion
Machine-learning atomic simulation for heterogeneous catalysis | Litcius