Structural Disorder by Octahedral Tilting in Inorganic Halide Perovskites : New Insight with Bayesian Optimization

Jingrui Li*, Fang Pan, Guo-Xu Zhang, Zenghui Liu, Hua Dong, Dawei Wang, Zhuangde Jiang, Wei Ren, Zuo-Guang Ye, Milica Todorović*, Patrick Rinke

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Structural disorder is common in metal-halide perovskites and important for understanding the functional properties of these materials. First-principles methods can address structure variation on the atomistic scale, but they are often limited by the lack of structure-sampling schemes required to characterize the disorder. Herein, structural disorder in the benchmark inorganic halide perovskites CsPbI3 and CsPbBr3 is computationally studied in terms of the three octahedral-tilting angles. The subsequent variations in energetics and properties are described by 3D potential-energy surfaces (PESs) and property landscapes, delivered by Bayesian optimization as implemented in the Bayesian optimization structure search code sampling density functional theory (DFT) calculations. The rapid convergence of the PES with about 200 DFT data points in 3D searches demonstrates the power of active learning and strategic sampling with Bayesian optimization. Further analysis indicates that disorder grows with increasing temperature and reveals that the material bandgap at finite temperatures is a statistical mean over disordered structures.

Original languageEnglish
Article number2400268
JournalSmall Structures
Volume5
Issue number11
Early online date2024
DOIs
Publication statusPublished - Nov 2024
MoE publication typeA1 Journal article-refereed

Keywords

  • Bayesian optimizations
  • cesium lead halide perovskites
  • first-principles calculations
  • multidimensional potential-energy surfaces
  • structural disorders

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  • LEARNSOLAR: Rinke-LearnSolar

    Rinke, P. (Principal investigator), Hoffmann, G. (Project Member), Dvorak, M. (Project Member), Henkel, P. (Project Member), Fangnon, A. (Project Member) & Laakso, J. (Project Member)

    01/09/202031/08/2024

    Project: Academy of Finland: Other research funding

  • Artificial Intelligence for Microscopic Structure Search

    Rinke, P. (Principal investigator), Geurts, A. (Project Member), Ghosh, K. (Project Member), Himanen, L. (Project Member), Li, J. (Project Member) & Todorovic, M. (Project Member)

    01/01/201831/12/2021

    Project: Academy of Finland: Other research funding

  • Database driven science for new materials

    Rinke, P. (Principal investigator), Li, J. (Project Member), Dvorak, M. (Project Member) & Geurts, A. (Project Member)

    01/10/201630/09/2018

    Project: Academy of Finland: Other research funding

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