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Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning

Bandgap engineering of lead halide perovskite materials is critical to achieve highly efficient and stable perovskite solar cells and color tunable stable perovskite light-emitting diodes. Herein, we propose the use of machine learning as a tool to predict the bandgap of the perovskite materials fro...

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Autores principales: Li, Yaoyao, Lu, Yao, Huo, Xiaomin, Wei, Dong, Meng, Juan, Dong, Jie, Qiao, Bo, Zhao, Suling, Xu, Zheng, Song, Dandan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9030536/
https://www.ncbi.nlm.nih.gov/pubmed/35481197
http://dx.doi.org/10.1039/d1ra03117a
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author Li, Yaoyao
Lu, Yao
Huo, Xiaomin
Wei, Dong
Meng, Juan
Dong, Jie
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
author_facet Li, Yaoyao
Lu, Yao
Huo, Xiaomin
Wei, Dong
Meng, Juan
Dong, Jie
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
author_sort Li, Yaoyao
collection PubMed
description Bandgap engineering of lead halide perovskite materials is critical to achieve highly efficient and stable perovskite solar cells and color tunable stable perovskite light-emitting diodes. Herein, we propose the use of machine learning as a tool to predict the bandgap of the perovskite materials from their compositions. By learning from the experimental results, machine learning algorithms present reliable performance in predicting the bandgap of the lead halide perovskites. The linear regression model can be used to manually predict the bandgap of the perovskite with the formula of Cs(a)FA(b)MA((1−a−b))Pb(Cl(x)Br(y)I((1−x−y)))(3) (FA = formamidinium, MA = methylammonium). The neural network (NN) algorithm, which takes the interplay of cations and halide ions into account in predicting the bandgap, presents higher accuracy (with a RMSE of 0.05 eV and a Pearson coefficient larger than 0.99). Furthermore, the compositions of the mixed halide perovskites with desirable bandgaps and high iodide ratio for suppressing halide segregation are predicted by NN algorithm. These results highlight the power of machine learning in predicting the bandgap of the perovskites from their compositions and provide bandgap tuning directions for experiments.
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spelling pubmed-90305362022-04-26 Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning Li, Yaoyao Lu, Yao Huo, Xiaomin Wei, Dong Meng, Juan Dong, Jie Qiao, Bo Zhao, Suling Xu, Zheng Song, Dandan RSC Adv Chemistry Bandgap engineering of lead halide perovskite materials is critical to achieve highly efficient and stable perovskite solar cells and color tunable stable perovskite light-emitting diodes. Herein, we propose the use of machine learning as a tool to predict the bandgap of the perovskite materials from their compositions. By learning from the experimental results, machine learning algorithms present reliable performance in predicting the bandgap of the lead halide perovskites. The linear regression model can be used to manually predict the bandgap of the perovskite with the formula of Cs(a)FA(b)MA((1−a−b))Pb(Cl(x)Br(y)I((1−x−y)))(3) (FA = formamidinium, MA = methylammonium). The neural network (NN) algorithm, which takes the interplay of cations and halide ions into account in predicting the bandgap, presents higher accuracy (with a RMSE of 0.05 eV and a Pearson coefficient larger than 0.99). Furthermore, the compositions of the mixed halide perovskites with desirable bandgaps and high iodide ratio for suppressing halide segregation are predicted by NN algorithm. These results highlight the power of machine learning in predicting the bandgap of the perovskites from their compositions and provide bandgap tuning directions for experiments. The Royal Society of Chemistry 2021-04-27 /pmc/articles/PMC9030536/ /pubmed/35481197 http://dx.doi.org/10.1039/d1ra03117a Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Li, Yaoyao
Lu, Yao
Huo, Xiaomin
Wei, Dong
Meng, Juan
Dong, Jie
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title_full Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title_fullStr Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title_full_unstemmed Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title_short Bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
title_sort bandgap tuning strategy by cations and halide ions of lead halide perovskites learned from machine learning
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9030536/
https://www.ncbi.nlm.nih.gov/pubmed/35481197
http://dx.doi.org/10.1039/d1ra03117a
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