IrO2 Surface Complexions Identified through Machine Learning and Surface Investigations

  • Jakob Timmermann
  • , Florian Kraushofer
  • , Nikolaus Resch
  • , Peigang Li
  • , Yu Wang
  • , Zhiqiang Mao
  • , Michele Riva
  • , Yonghyuk Lee
  • , Carsten Staacke
  • , Michael Schmid
  • , Christoph Scheurer
  • , Gareth S. Parkinson
  • , Ulrike Diebold
  • , Karsten Reuter

Research output: Contribution to journalArticlepeer-review

56 Scopus citations

Abstract

A Gaussian approximation potential was trained using density-functional theory data to enable a global geometry optimization of low-index rutile IrO2 facets through simulated annealing. Ab initio thermodynamics identifies (101) and (111) (1×1) terminations competitive with (110) in reducing environments. Experiments on single crystals find that (101) facets dominate and exhibit the theoretically predicted (1×1) periodicity and x-ray photoelectron spectroscopy core-level shifts. The obtained structures are analogous to the complexions discussed in the context of ceramic battery materials.

Original languageEnglish
Article number206101
JournalPhysical Review Letters
Volume125
Issue number20
DOIs
StatePublished - 10 Nov 2020

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