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Deep Learning Based Detection of Cracks in Electroluminescence Images of Fielded PV modules

机译:基于深度学习的PV模块电致发光图像裂缝的检测

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In this paper, we have proposed a deep learning network for classification of electroluminescence (EL) image of solar cells into good or cracked cells for low resolution images captured in the field. Such crack detection in EL images is becoming important to reduce the time required for manual inspection and to minimize human error. Most implemented deep learning methods use high-resolution images captured in controlled environment inside a lab for training the network model. This model, when used for field data will not perform well due to non-ideal conditions. In our work we use, EL images collected from PV power plants located in different parts of India during ‘All India Survey 2018’, which include 5 climatic zones and modules from 20 different module manufacturers to train the deep neural network. The EL images were captured using a customized CMOS-based camera having comparatively lower resolution. Thus the deep neural network model is trained for on field variations and the accuracy of crack detection is 98.59% even for the lower resolution.
机译:在本文中,我们提出了一种深度学习网络,用于将太阳能电池的电致发光(EL)图像分类为良好或破裂的细胞,用于在该领域捕获的低分辨率图像。 EL图像中的这种裂纹检测变得很重要,可以减少手动检查所需的时间并最大限度地减少人为错误。大多数实施的深度学习方法使用在实验室内的受控环境中捕获的高分辨率图像进行培训网络模型。此模型,当用于字段数据时,由于非理想条件,不会良好地表现良好。在我们的工作中,我们使用的是,位于印度的不同地区的PV发电厂收集的EL图像,包括来自20个不同模块制造商的5个气候区域和模块,以培训深度神经网络。使用具有相对较低的分辨率的定制CMOS的相机捕获EL图像。因此,对于较低的分辨率,深度神经网络模型培训用于场变化,裂纹检测的准确性为98.59%。

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