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Intelligent Defect Detection Method of Photovoltaic Modules Based on Deep Learning

机译:基于深度学习的光伏模块智能缺陷检测方法

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Currently, photovoltaic module manufacturers still rely on manual detection of EL images of photovoltaic modules to identify hidden defects. EL image detection is an important link in the quality control of photovoltaic modules production. Manual detection leads to slow detection speed, and the accuracy is affected by personal subjective judgment. In this paper, an intelligent defect detection method based on deep learning is proposed. The method first builds a network according to the sample characteristics. The initial network value is obtained through training. Then, the neural algorithm is used to adjust the network parameters to obtain the mapping relationship between training samples and defect-free templates. Finally, the comparison between reconstructed image and defect image is used to realize defect detection of test samples. Experiments show that the method based on deep learning can detect defects accurately and quickly.
机译:目前,光伏模块制造商仍然依靠手动检测光伏模块的EL图像来识别隐藏的缺陷。 EL图像检测是光伏模块生产质量控制中的重要环节。手动检测导致检测速度慢,准确性受到个人主观判断的影响。本文提出了一种基于深度学习的智能缺陷检测方法。该方法首先根据采样特性构建网络。初始网络值是通过培训获得的。然后,神经算法用于调整网络参数以获得训练样本和无缺陷模板之间的映射关系。最后,重建图像与缺陷图像之间的比较用于实现测试样本的缺陷检测。实验表明,基于深度学习的方法可以准确迅速地检测缺陷。

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