Issue 1, 2023

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

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.

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

Supplementary files

Article information

Article type
Paper
Submitted
01 Sep 2022
Accepted
10 Nov 2022
First published
29 Nov 2022
This article is Open Access
Creative Commons BY license

Mater. Adv., 2023,4, 231-239

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

Y. Koyama, H. Ikeno, M. Harada, S. Funahashi, T. Takeda and N. Hirosaki, Mater. Adv., 2023, 4, 231 DOI: 10.1039/D2MA00881E

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