論文 Rapid discovery of new Eu2+-activated phosphors with a designed luminescence color using a data-driven approach

Yukinori Koyama SAMURAI ORCID (Research and Services Division of Materials Data and Integrated System, National Institute for Materials ScienceROR) ; Hidekazu Ikeno (Osaka Metropolitan University) ; Masamichi Harada (Research Center for Functional Materials, National Institute for Materials ScienceROR) ; Shiro Funahashi (Research Center for Functional Materials, National Institute for Materials ScienceROR) ; Takashi Takeda SAMURAI ORCID (Research Center for Functional Materials, National Institute for Materials ScienceROR) ; Naoto Hirosaki (Research Center for Functional Materials, National Institute for Materials ScienceROR)

コレクション

引用
Yukinori Koyama, Hidekazu Ikeno, Masamichi Harada, Shiro Funahashi, Takashi Takeda, Naoto Hirosaki. Rapid discovery of new Eu2+-activated phosphors with a designed luminescence color using a data-driven approach. Materials Advances. 2022, 4 (1), 231-239. https://doi.org/10.1039/D2MA00881E
SAMURAI

説明:

(abstract)

For rapid and efficient development of new phosphors, a suitable method that proposes promising candidates is expected to focus time-consuming trial-and-error experiments. A data-driven approach to discover new phosphor materials with a designed luminescence color is demonstrated in this paper. To screen compounds for a desirable luminescence color, a machine learning model has been developed for predicting emission peak wavelengths from a dataset composed of 129 Eu2+-activated phosphors. General-purpose compositional and structural features are used to represent host compounds of phosphors. Bootstrap aggregation with the gradient boosted regression trees method is adopted to obtain high predictive performance and to avoid overfitting. The predictive performance of the machine learning model is estimated to be 25 nm of mean absolute error (MAE) and 33 nm of root mean squared error (RMSE) by 10-fold cross validation. To discover new green-emitting Eu2+-activated phosphors, twenty candidate compounds have been selected to have predicted emission peak wavelengths of about 500–550 nm from a materials database, and the candidates have been synthesized and characterized by experiments. Three new Eu2+-activated phosphors, Li2Ca4Si4O13:Eu2+, Na2Ca2Si2O7:Eu2+, and SrLaGaO4:Eu2+, successfully show green or blue-green emissions as designed.

権利情報:

キーワード: phosphor, materials design, machine learning, luminescence, emission spectrum, Eu2+

刊行年月日: 2022-11-29

出版者: Royal Society of Chemistry

掲載誌:

  • Materials Advances (ISSN: 26335409) vol. 4 issue. 1 p. 231-239

研究助成金:

  • JST JPMJCR19J2 (CREST)

原稿種別: 出版者版 (Version of record)

MDR DOI: https://doi.org/10.48505/nims.3845

公開URL: https://doi.org/10.1039/D2MA00881E

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更新時刻: 2024-01-05 22:11:23 +0900

MDRでの公開時刻: 2023-01-20 10:13:46 +0900

ファイル名 サイズ
ファイル名 Na2Ca2Si2O7.cif
chemical/x-cif
サイズ 2.68MB 詳細
ファイル名 SrLaGaO4.cif
chemical/x-cif
サイズ 202KB 詳細
ファイル名 printcif_Li2Ca4Si4O13.pdf
application/pdf
サイズ 88KB 詳細
ファイル名 printcif_Na2Ca2Si2O7.pdf
application/pdf
サイズ 180KB 詳細
ファイル名 d2ma00881e.pdf (サムネイル)
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サイズ 1.48MB 詳細
ファイル名 d2ma00881e1.pdf
application/pdf
サイズ 504KB 詳細
ファイル名 Li2Ca4Si4O13.cif
chemical/x-cif
サイズ 649KB 詳細
ファイル名 printcif_SrLaGaO4.pdf
application/pdf
サイズ 59.7KB 詳細