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Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning

Quasi-2D perovskites with the general formula of L(2)A(n−1)Pb(n)X(3n+1) (L = organic spacer cation, A = small organic cation or inorganic cation, X = halide ion, and n ≤ 5) are an emerging kind of luminescent material. Their emission color can be easily tuned by their composition and n value. Accura...

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Autores principales: Wang, Wei, Li, Yueqiao, Zou, Ang, Shi, Haochen, Huang, Xiaofeng, Li, Yaoyao, Wei, Dong, Qiao, Bo, Zhao, Suling, Xu, Zheng, Song, Dandan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: RSC 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9418379/
https://www.ncbi.nlm.nih.gov/pubmed/36134380
http://dx.doi.org/10.1039/d2na00052k
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author Wang, Wei
Li, Yueqiao
Zou, Ang
Shi, Haochen
Huang, Xiaofeng
Li, Yaoyao
Wei, Dong
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
author_facet Wang, Wei
Li, Yueqiao
Zou, Ang
Shi, Haochen
Huang, Xiaofeng
Li, Yaoyao
Wei, Dong
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
author_sort Wang, Wei
collection PubMed
description Quasi-2D perovskites with the general formula of L(2)A(n−1)Pb(n)X(3n+1) (L = organic spacer cation, A = small organic cation or inorganic cation, X = halide ion, and n ≤ 5) are an emerging kind of luminescent material. Their emission color can be easily tuned by their composition and n value. Accurate prediction of the photon energy before experiments is essential but unpractical based on present studies. Herein, we use machine learning (ML) to explore the quantitative relationship between the photon energies of quasi-2D perovskite materials and their precursor compositions. The random forest (RF) model presents high accuracy in prediction with a root mean square error (RMSE) of ∼0.05 eV on a test set. By feature importance analysis, the composition of the A-site cation is found to be a critical factor affecting the photon energy. Moreover, it is also found that the phase impurity greatly lowers the photon energy and needs to be minimized. Furthermore, the RF model predicts the compositions of quasi-2D perovskites with high photon energies for blue emission. These results highlight the advantage of machine learning in predicting the properties of quasi-2D perovskites before experiments and also providing color tuning directions for experiments.
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spelling pubmed-94183792022-09-20 Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning Wang, Wei Li, Yueqiao Zou, Ang Shi, Haochen Huang, Xiaofeng Li, Yaoyao Wei, Dong Qiao, Bo Zhao, Suling Xu, Zheng Song, Dandan Nanoscale Adv Chemistry Quasi-2D perovskites with the general formula of L(2)A(n−1)Pb(n)X(3n+1) (L = organic spacer cation, A = small organic cation or inorganic cation, X = halide ion, and n ≤ 5) are an emerging kind of luminescent material. Their emission color can be easily tuned by their composition and n value. Accurate prediction of the photon energy before experiments is essential but unpractical based on present studies. Herein, we use machine learning (ML) to explore the quantitative relationship between the photon energies of quasi-2D perovskite materials and their precursor compositions. The random forest (RF) model presents high accuracy in prediction with a root mean square error (RMSE) of ∼0.05 eV on a test set. By feature importance analysis, the composition of the A-site cation is found to be a critical factor affecting the photon energy. Moreover, it is also found that the phase impurity greatly lowers the photon energy and needs to be minimized. Furthermore, the RF model predicts the compositions of quasi-2D perovskites with high photon energies for blue emission. These results highlight the advantage of machine learning in predicting the properties of quasi-2D perovskites before experiments and also providing color tuning directions for experiments. RSC 2022-02-09 /pmc/articles/PMC9418379/ /pubmed/36134380 http://dx.doi.org/10.1039/d2na00052k Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Wang, Wei
Li, Yueqiao
Zou, Ang
Shi, Haochen
Huang, Xiaofeng
Li, Yaoyao
Wei, Dong
Qiao, Bo
Zhao, Suling
Xu, Zheng
Song, Dandan
Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title_full Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title_fullStr Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title_full_unstemmed Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title_short Predicting the photon energy of quasi-2D lead halide perovskites from the precursor composition through machine learning
title_sort predicting the photon energy of quasi-2d lead halide perovskites from the precursor composition through machine learning
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9418379/
https://www.ncbi.nlm.nih.gov/pubmed/36134380
http://dx.doi.org/10.1039/d2na00052k
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