English
 
Help Privacy Policy Disclaimer
  Advanced SearchBrowse

Item

ITEM ACTIONSEXPORT

Released

Journal Article

Machine-learning driven global optimization of surface adsorbate geometries

MPS-Authors
/persons/resource/persons287824

Jung,  Hyunwook
Theory, Fritz Haber Institute, Max Planck Society;

/persons/resource/persons273611

Sauerland,  Lena
Theory, Fritz Haber Institute, Max Planck Society;

/persons/resource/persons264082

Stocker,  Sina
Theory, Fritz Haber Institute, Max Planck Society;

/persons/resource/persons22000

Reuter,  Karsten       
Theory, Fritz Haber Institute, Max Planck Society;

/persons/resource/persons257500

Margraf,  Johannes       
Theory, Fritz Haber Institute, Max Planck Society;

External Resource
No external resources are shared
Fulltext (restricted access)
There are currently no full texts shared for your IP range.
Fulltext (public)

s41524-023-01065-w.pdf
(Publisher version), 2MB

Supplementary Material (public)
There is no public supplementary material available
Citation

Jung, H., Sauerland, L., Stocker, S., Reuter, K., & Margraf, J. (2023). Machine-learning driven global optimization of surface adsorbate geometries. npj Computational Materials, 9: 114. doi:10.1038/s41524-023-01065-w.


Cite as: https://hdl.handle.net/21.11116/0000-000D-8148-0
Abstract
The adsorption energies of molecular adsorbates on catalyst surfaces are key descriptors in computational catalysis research. For the relatively large reaction intermediates frequently encountered, e.g., in syngas conversion, a multitude of possible binding motifs leads to complex potential energy surfaces (PES), however. This implies that finding the optimal structure is a difficult global optimization problem, which leads to significant uncertainty about the stability of many intermediates. To tackle this issue, we present a global optimization protocol for surface adsorbate geometries which trains a surrogate machine learning potential on-the-fly. The approach is applicable to arbitrary surface models and adsorbates and minimizes both human intervention and the number of required DFT calculations by iteratively updating the training set with configurations explored by the algorithm. We demonstrate the efficiency of this approach for a diverse set of adsorbates on the Rh(111) and (211) surfaces.