红外图像中PV故障模式检测的深度学习方法:初步见解

Daniel Rocha, Miguel Lopes, J. Teixeira, P. Fernandes, Modesto Morais, P. Salomé
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引用次数: 2

摘要

大型太阳能发电厂需要廉价和快速的检查,用于高分辨率光学和红外成像的无人机(UAV)在过去几年被引入。虽然使用无人机可以快速获取图像,但图像是一个耗时的过程,目前的最佳实践仍然是由专家单独分析每张图像。因此,在这项工作中,我们使用计算机视觉来加速这一过程。我们使用预训练的掩模R-CNN进行了实例分割评估,以分割有缺陷的模块和细胞,以及分割和分类故障。由于该方法过去表现良好,因此选择了该方法。在这项工作中,我们创建了一个由42048个模块组成的太阳能发电厂的数据库,并由专家分析了这些图像。后来,我们的计算机算法结果与专家进行了基准测试。该算法在不受人为干扰的情况下,缺陷模块分割掩码的平均精度(mAP)为72.1%,故障类型分割掩码的平均精度(mAP)为47.9%,交集超过联合阈值(IoU)为0.50。提出的初步结果允许评估方法的优点和缺点,以提高性能,并为大规模研究铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach for PV Failure Mode Detection in Infrared Images: First Insights
Large-scale solar power plants require cheap and quick inspections, for this unmanned aerial vehicle (UAV's) for high resolution optical and infrared imaging were introduced in the past years. While using UAV's is fast for image acquisition, image is a time-consuming process where the best of practice today is still for an expert to individually analyze each image. As such, in this work we use computer vision to accelerate this process. We performed an instance segmentation assessment using a pre-trained mask R-CNN for the segmentation of defective modules, and cells, as well as for segmentation and classification of failures. This method was chosen due its good past performance. In this work we created a database from a solar power plant consisting of 42048 modules and an expert analyzed the images. Later on, our computer algorithm results were benchmarked against the expert. Our algorithm achieved a mean average precision (mAP) in defective module segmentation mask of 72.1 % and 47.9 % in segmentation mask of failure type with an intersection over union threshold (IoU) of 0.50, without human interference. The presented preliminary results allow to assess the methodology advantages and drawbacks to increase performance and pave the way to a large-scale study.
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