Identify solar panel defects by using differences between solar panels

J. Deng, T. Minematsu, A. Shimada, R. Taniguchi
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引用次数: 1

Abstract

Automatic solar panel inspection systems are essential to maintain power generation efficiency and reduce the cost. Thermal images generated by thermographic cameras can be used for solar panel fault diagnosis because defective panels show abnormal temperature. However, it is difficult to identify an anomaly from a single panel image when similar temperature features appear in normal panels and abnormal panels. In this paper, we propose a different feature based method to identify defective solar panels in thermal images. To determine abnormal panel from input panel images, we apply a voting strategy by using the prediction results of subtraction network. In our experiments, we construct two datasets to evaluate our method: the clean panels dataset which is constructed by manually extracted panel images and the noise containing dataset which is consisting of panel images extracted by the automatic panel extraction method. Our method achieves more than 90% classification accuracy on both clean panels dataset and noise containing dataset.
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利用太阳能电池板之间的差异来识别太阳能电池板缺陷
太阳能电池板自动检测系统对于保持发电效率和降低成本至关重要。热像仪产生的热图像可以用于太阳能电池板的故障诊断,因为有缺陷的电池板显示出异常的温度。然而,当正常面板和异常面板出现相似的温度特征时,很难从单个面板图像中识别异常。在本文中,我们提出了一种不同的基于特征的方法来识别热图像中的缺陷太阳能电池板。为了从输入面板图像中确定异常面板,我们采用了一种基于减法网络预测结果的投票策略。在我们的实验中,我们构建了两个数据集来评估我们的方法:一个是由人工提取面板图像构建的干净面板数据集,另一个是由自动面板提取方法提取的面板图像组成的含噪声数据集。该方法对清洁面板数据集和含噪声数据集的分类准确率均达到90%以上。
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