Machine learning guided rapid discovery of narrow-bandgap inorganic halide perovskite materials

被引:0
作者
Gang Li
Chaofeng Wang
Jiajia Huang
Like Huang
Yuejin Zhu
机构
[1] Ningbo University,Faculty of Electrical Engineering and Computer Science
[2] Ningbo University,Department of Microelectronic Science and Engineering, School of Physical Science and Technology
[3] Ningbo University,School of Information Engineering, College of Science and Technology
来源
Applied Physics A | 2024年 / 130卷
关键词
Inorganic halide perovskites; Bandgap design; Machine learning; Feature engineering;
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学科分类号
摘要
The bandgap of inorganic halide perovskites plays a crucial role in the efficiency of solar cells. Although density functional theory can be used to calculate the bandgap of materials, the method is time-consuming and requires deep knowledge of theoretical calculations, theoretical calculations are frequently constrained by complex electronic correlations and lattice dynamics, resulting in discrepancies between calculated and experimental results. To address this issue, this study employs machine learning to predict the bandgap of inorganic halide perovskites. The XGBoost classifier classifies ABX3-type inorganic halide perovskites into narrow and wide bandgap materials. The study collected a dataset consisting of 447 perovskites and generated material descriptors using the Matminer Python package. The model predicts narrow-bandgap materials with 95% accuracy. Finally, the Shapley analysis revealed that the key factor affecting the bandgap of perovskites is the electronegativity range. As the range of electronegativity increases, so does the possibility of a perovskite with a narrow bandgap. These findings highlight the powerful ability of machine learning to quickly and accurately predict the bandgap of perovskites.
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