The multifaceted physics of oxides is shaped by their composition and the presence of defects, which are often accompanied by the formation of polarons. The simultaneous presence of polarons and defects, and their complex interactions, pose challenges for first-principles simulations and experimental techniques. In this study, we leverage machine learning and a first-principles database to analyze the distribution of surface oxygen vacancies (VO) and induced small polarons on rutile TiO2(110), effectively disentangling the interactions between polarons and defects. By combining neural-network supervised learning and simulated annealing, we elucidate the inhomogeneous VO distribution observed in scanning probe microscopy (SPM). Our approach allows us to understand and predict defective surface patterns at enhanced length scales, identifying the specific role of individual types of defects. Specifically, surface-polaron-stabilizing VO-configurations are identified, which could have consequences for surface reactivity.

Birschitzky V.C., Sokolovic I., Prezzi M., Palotas K., Setvin M., Diebold U., et al. (2024). Machine learning-based prediction of polaron-vacancy patterns on the TiO2(110) surface. NPJ COMPUTATIONAL MATERIALS, 10(1), 1-9 [10.1038/s41524-024-01289-4].

Machine learning-based prediction of polaron-vacancy patterns on the TiO2(110) surface

Franchini C.
Ultimo
Conceptualization
2024

Abstract

The multifaceted physics of oxides is shaped by their composition and the presence of defects, which are often accompanied by the formation of polarons. The simultaneous presence of polarons and defects, and their complex interactions, pose challenges for first-principles simulations and experimental techniques. In this study, we leverage machine learning and a first-principles database to analyze the distribution of surface oxygen vacancies (VO) and induced small polarons on rutile TiO2(110), effectively disentangling the interactions between polarons and defects. By combining neural-network supervised learning and simulated annealing, we elucidate the inhomogeneous VO distribution observed in scanning probe microscopy (SPM). Our approach allows us to understand and predict defective surface patterns at enhanced length scales, identifying the specific role of individual types of defects. Specifically, surface-polaron-stabilizing VO-configurations are identified, which could have consequences for surface reactivity.
2024
Birschitzky V.C., Sokolovic I., Prezzi M., Palotas K., Setvin M., Diebold U., et al. (2024). Machine learning-based prediction of polaron-vacancy patterns on the TiO2(110) surface. NPJ COMPUTATIONAL MATERIALS, 10(1), 1-9 [10.1038/s41524-024-01289-4].
Birschitzky V.C.; Sokolovic I.; Prezzi M.; Palotas K.; Setvin M.; Diebold U.; Reticcioli M.; Franchini C.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/983203
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