Predicting the Enthalpy of Hydrocarbon Radicals Adsorbed on Pt(111) Using Molecular Fingerprints and Machine Learning
Jinwoong Nam,
Charanyadevi Ramasamy,
Daniel E. Raser
et al.
Abstract:The reliable prediction of properties for the adsorbates, including their enthalpy, has been a long-standing challenge as a first key step in studying surface reactions. It is especially difficult when large adsorbates are involved as the interactions between the adsorbates and surface atoms are complex. Here, we developed machine learning (ML) models for the prediction of the formation enthalpy of various C 2 to C 6 hydrocarbon adsorbates on the Pt(111) surface based on 384 density functional theory calculati… Show more
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