<div class="csl-bib-body">
<div class="csl-entry">Birschitzky, V., Ellinger, F., Diebold, U., Reticcioli, M., & Franchini, C. (2022). Machine learning for exploring small polaron configurational space. <i>Npj Computational Materials</i>, <i>8</i>(125), 1–9. https://doi.org/10.1038/s41524-022-00805-8</div>
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dc.identifier.issn
2057-3960
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/136253
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dc.description.abstract
Polaron defects are ubiquitous in materials and play an important role in many processes involving carrier mobility, charge transfer and surface reactivity. Determining small polarons’ spatial distributions is essential to understand materials properties and functionalities. However, the required exploration of the configurational space is computationally demanding when using first principles methods. Here, we propose a machine-learning (ML) accelerated search that determines the ground state polaronic configuration. The ML model is trained on databases of polaron configurations generated by density functional theory (DFT) via molecular dynamics or random sampling. To establish a mapping between configurations and their stability, we designed descriptors modelling the interactions among polarons and charged point defects. We used the DFT+ML protocol to explore the polaron configurational space for two surface-systems, reduced rutile TiO2(110) and Nb-doped SrTiO3(001). The ML-aided search proposes additional polaronic configurations and can be utilized to determine optimal polaron distributions at any charge concentration.
en
dc.language.iso
en
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dc.publisher
NATURE PORTFOLIO
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dc.relation.ispartof
npj Computational Materials
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dc.subject
Surface Science
en
dc.title
Machine learning for exploring small polaron configurational space