Photoluminescence Color Prediction for Eu3+‐Doped Perovskite Red Phosphors Using Machine Learning

Author:

Otsuka Takahito1ORCID,Oka Ryohei1,Karasuyama Masayuki2,Hayakawa Tomokatsu1

Affiliation:

1. Field of Advanced Ceramics Department of Life Science and Applied Chemistry Nagoya Institute of Technology (NITech) Nagoya 466-0061 Aichi Japan

2. Field of Computational Intelligence Department of Computer Science Nagoya Institute of Technology (NITech) Nagoya Aichi 466-0061 Japan

Abstract

Currently, data‐driven approaches for exploring novel materials are garnering significant attention with the expectation of accelerating material development cycles and understanding materials from various aspects. This short article presents a supervised prediction model for the emission intensity ratio of 5D07F2 and 5D07F1 transition of Eu3+ ions, called an “asymmetry ratio”, which determines the color purity of the red region of Eu3+ photoluminescence in perovskite phosphors. The model is developed using a dataset of 296 samples and 203 descriptors for Eu3+‐doped perovskite. The accuracy of the prediction model trained by the dataset is statistically evaluated, which validates its sufficiently high prediction performance. Furthermore, the prediction model's performance is properly assessed by synthesizing a Eu3+‐doped NaLaInNbO6 compound, which is unknown as a red phosphor, and by comparing the experimental asymmetry ratio for this compound with that predicted by the predictor, which exhibits satisfactory agreement.

Funder

Japan Society for the Promotion of Science

Deutsche Forschungsgemeinschaft

Publisher

Wiley

Subject

Condensed Matter Physics,General Materials Science

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