Prediction of Transition-State Energies of Hydrodeoxygenation Reactions on Transition-Metal Surfaces Based on Machine Learning

Computational catalyst discovery involves identification of a meaningful model and suitable descriptors that determine the catalyst properties. We study the impact of combining various descriptors (e.g., reaction energies, metal descriptors, and bond counts) for modeling transition-state energies (T...

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Veröffentlicht in:Journal of physical chemistry. C 2019-12, Vol.123 (49), p.29804-29810
Hauptverfasser: Abdelfatah, Kareem, Yang, Wenqiang, Vijay Solomon, Rajadurai, Rajbanshi, Biplab, Chowdhury, Asif, Zare, Mehdi, Kundu, Subrata Kumar, Yonge, Adam, Heyden, Andreas, Terejanu, Gabriel
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Sprache:eng
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Zusammenfassung:Computational catalyst discovery involves identification of a meaningful model and suitable descriptors that determine the catalyst properties. We study the impact of combining various descriptors (e.g., reaction energies, metal descriptors, and bond counts) for modeling transition-state energies (TS) based on a database of adsorption and TS energies across transition-metal surfaces for the decarboxylation and decarbonylation of propionic acid, a chemistry characteristic for biomass conversion. Results of different machine learning models for more than 1572 descriptor combinations suggest that there is no statistically significant difference between linear and nonlinear models when using the right combination of reactant energies, metal descriptors, and bond counts. However, linear models are inferior when not including bond count and metal descriptors. Furthermore, when there are missing data for reaction steps on all metals, conventional linear scaling is inferior to linear and nonlinear models with proper choice of descriptors that are surprisingly robust.
ISSN:1932-7447
1932-7455
DOI:10.1021/acs.jpcc.9b10507