Photovoltaics Laboratory, School of Physics, Engineering and Technology, University of York, York, YO10 5DD, UK.
Sci Rep. 2023 Jul 9;13(1):11099. doi: 10.1038/s41598-023-38177-8.
This paper presents a solar cell crack detection system for use in photovoltaic (PV) assembly units. The system utilizes four different Convolutional Neural Network (CNN) architectures with varying validation accuracy to detect cracks, microcracks, Potential Induced Degradations (PIDs), and shaded areas. The system examines the electroluminescence (EL) image of a solar cell and determines its acceptance or rejection status based on the presence and size of the crack. The proposed system was tested on various solar cells and achieved a high degree of accuracy, with an acceptance rate of up to 99.5%. The system was validated with thermal testing using real-world cases, such as shaded areas and microcracks, which were accurately predicted by the system. The results show that the proposed system is a valuable tool for evaluating the condition of PV cells and can lead to improved efficiency. The study also shows that the proposed CNN model outperforms previous studies and can have significant implications for the PV industry by reducing the number of defective cells and improving the overall efficiency of PV assembly units.
本文提出了一种用于光伏 (PV) 组件的太阳能电池裂缝检测系统。该系统利用具有不同验证精度的四个不同卷积神经网络 (CNN) 架构来检测裂缝、微裂缝、潜在诱导退化 (PID) 和阴影区域。该系统检查太阳能电池的电致发光 (EL) 图像,并根据裂缝的存在和大小确定其接受或拒绝状态。所提出的系统在各种太阳能电池上进行了测试,达到了很高的准确性,接受率高达 99.5%。该系统通过使用真实案例(如阴影区域和微裂缝)进行热测试进行了验证,系统准确地预测了这些案例。结果表明,该系统是评估 PV 电池状况的有用工具,可以通过减少有缺陷的电池数量和提高 PV 组件的整体效率来提高效率。该研究还表明,所提出的 CNN 模型优于以前的研究,并可以通过减少有缺陷的电池数量和提高 PV 组件的整体效率,对 PV 行业产生重大影响。