Fast and non-destructive analysis of material defect is a crucial demand for semiconductor devices. Herein, we are devoted to exploring a solar-cell defect analysis method based on machine learning of the modulated transient photovoltage (m-TPV) measurement. The perturbation photovoltage generation and decay mechanism of the solar cell is firstly clarified for this study. High-throughput electrical transient simulations are further carried out to establish a database containing millions of m-TPV curves. This database is subsequently used to train an artificial neural network to correlate the m-TPV and defect properties of the perovskite solar cell. A Back Propagation neural network has been screened out and applied to provide a multiple parameter defect analysis of the cell. This analysis reveals that in a practical solar cell, compared to the defect density, the charge capturing cross-section plays a more critical role in influencing the charge recombination properties. We believe this defect analysis approach will play a more important and diverse role for solar cell studies.
Accelerating defect analysis of solar cells via machine learning of the modulated transient photovoltage.
利用机器学习技术对调制瞬态光电压进行分析,加速太阳能电池缺陷分析
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作者:Li Yusheng, Li Yiming, Shi Jiangjian, Lou Licheng, Xu Xiao, Cui Yuqi, Wu Jionghua, Li Dongmei, Luo Yanhong, Wu Huijue, Shen Qing, Meng Qingbo
| 期刊: | Fundamental Research | 影响因子: | 6.300 |
| 时间: | 2024 | 起止号: | 2023 Feb 16; 4(6):1650-1656 |
| doi: | 10.1016/j.fmre.2023.02.002 | ||
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