A Deep Learning Approach for Loss-Analysis from Luminescence Images

Yoann Buratti, Zubair Abdullah‐Vetter, A. Sowmya, T. Trupke, Z. Hameiri
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引用次数: 2

Abstract

Identifying and quantifying loss mechanisms in solar cells are key requirements for increasing cell efficiencies. In this study, we present a novel method based on luminescence images to identify and quantify losses in silicon cells using a state of art deep learning technique: generative adversarial networks. In addition to the common use of defect identification, we also use the images to isolate a specific defect and to quantify its impact on cell efficiency. This is achieved by reconstructing a defect-free luminescence image and comparing it to the original image to determine the performance shortfall. The large-scale loss-analysis powered by the proposed deep learning method has the potential to significantly improve the quantitative analysis of luminescence image data, both in research and development and in high volume manufacturing.
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发光图像损失分析的深度学习方法
确定和量化太阳能电池的损耗机制是提高电池效率的关键要求。在本研究中,我们提出了一种基于发光图像的新方法,使用最先进的深度学习技术:生成对抗网络来识别和量化硅电池中的损耗。除了常见的缺陷识别之外,我们还使用图像来隔离特定的缺陷并量化其对细胞效率的影响。这是通过重建无缺陷的发光图像并将其与原始图像进行比较以确定性能不足来实现的。由所提出的深度学习方法驱动的大规模损耗分析有可能显著改善发光图像数据的定量分析,无论是在研发还是在大批量生产中。
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