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Title: Machine learning accelerated prediction of self-trapped excitons in double halide perovskites
Authors: Chen, B 
Chen, R
Huang, B 
Issue Date: Dec-2023
Source: Advanced energy and sustainability research, Dec. 2023, v. 4, no. 12, 2300134
Abstract: Broadband emission induced by self-trapped excitons (STEs) in double halideperovskites (DHPs) has received continuous attention in recent years. However,the comprehensive understanding of the STEs formation mechanism is still in itsearly stage. The corresponding roles of different B-site cations also remainunclear in these advanced materials. The lack of an effective STEs database forDHPs hinders the efficient discovery of potential optoelectronic materials withstrong STEs. Herein, a systematic STEs database is built for DHPs throughdensity functional theory (DFT) calculations and proposed a highly efficientpredictive machine learning (ML) model of the Huang–Rhys factorS for the firsttime. Results reveal the different contributions of two B-site metal cations to theformation of STEs in DHPs, which helps to understand the in-depth nature ofSTEs. Based on the accurate predictions of the effective phonon frequencyωLO ,it is further realized that the prediction ofS without conducting the time-consuming phonon property calculations of DHPs offers new opportunities forexploring the STEs. Combining DFT calculations and ML techniques, this studysupplies an effective approach to efficiently discover the potential noveloptoelectronic materials, which provides important guidance for the futureexploration of promising solid-state phosphors.
Keywords: Density functional theory calculations
Double halide perovskites
Electron-phonon coupling
Machine learning
Self-trapped excitons
Publisher: Wiley-VCH Verlag GmbH & Co. KGaA
Journal: Advanced energy and sustainability research 
EISSN: 2699-9412
DOI: 10.1002/aesr.202300134
Rights: © 2023 The Authors. Advanced Energy and Sustainability Research pub-lished by Wiley-VCH GmbH. This is an open access article under the termsof the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits use,distribution and reproduction in any medium, provided the originalwork is properly cited.
The following publication Chen, B., Chen, R. and Huang, B. (2023), Machine Learning Accelerated Prediction of Self-Trapped Excitons in Double Halide Perovskites. Adv. Energy Sustainability Res., 4: 2300134 is available at https://doi.org/10.1002/aesr.202300134.
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