Phase Transitions of Hybrid Perovskites Simulated by Machine-Learning Force Fields Trained on the Fly with Bayesian Inference

  • Ryosuke Jinnouchi
  • , Jonathan Lahnsteiner
  • , Ferenc Karsai
  • , Georg Kresse
  • , Menno Bokdam*
  • *Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

472 Citations (Scopus)
199 Downloads (Pure)

Abstract

Realistic finite temperature simulations of matter are a formidable challenge for first principles methods. Long simulation times and large length scales are required, demanding years of computing time. Here we present an on-the-fly machine learning scheme that generates force fields automatically during molecular dynamics simulations. This opens up the required time and length scales, while retaining the distinctive chemical precision of first principles methods and minimizing the need for human intervention. The method is widely applicable to multielement complex systems. We demonstrate its predictive power on the entropy driven phase transitions of hybrid perovskites, which have never been accurately described in simulations. Using machine learned potentials, isothermal-isobaric simulations give direct insight into the underlying microscopic mechanisms. Finally, we relate the phase transition temperatures of different perovskites to the radii of the involved species, and we determine the order of the transitions in Landau theory.

Original languageEnglish
Article number225701
JournalPhysical review letters
Volume122
Issue number22
DOIs
Publication statusPublished - 7 Jun 2019
Externally publishedYes

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