Statistical learning goes beyond the d-band model providing the thermochemistry of adsorbates on transition metals
Assessing catalytic mechanisms using DFT calculations greatly aids catalyst design, but is impractical for large molecules. Here the authors develop a statistical learning-based thermochemical model for estimating adsorption of organics onto metals, retaining DFT accuracy while reducing the number o...
Main Authors: | Rodrigo García-Muelas, Núria López |
---|---|
Format: | Article |
Language: | English |
Published: |
Nature Publishing Group
2019-10-01
|
Series: | Nature Communications |
Online Access: | https://doi.org/10.1038/s41467-019-12709-1 |
Similar Items
-
The thermochemistry of some transition metal complexes
by: McNaughton, Janice L.
Published: (1974) -
The thermochemistry of some transition metal complexes
by: Beech, Graham
Published: (1967) -
Donor stabilized germylenes and their transition metal complexes: structure, bonding, and thermochemistry
by: Marc, Baumeister
Published: (2011) -
Thermochemistry of some trivalent metal acetylacetonates
by: Hill, John Oxford
Published: (1966) -
Thermochemistry of some metal-β-diketonate complexes
by: Ribeiro da Silva, M. A. V.
Published: (1973)