Enhance PV Panel Detection Using Drone Equipped With RTK

H. Ismail, Mohammed Alhussein, Nawal Aljasmi, Saeed Almazrouei
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引用次数: 2

Abstract

Solar energy is getting a lot of traction due to the reduced cost and friendlier to the environment compared to fossil fuel. It is essential to inspect the PV farms to ensure that the correct capacity produced through early PV fault detection. We proposed a full autonomous solution, where the drone mission is programmed to follow a specific Global Positioning System (GPS) waypoints. The collected videos will undergo various image processing techniques to detect and track the PV panels. In this paper, we tried two different PV panel detection approaches. Both detections gave acceptable results. The first detection relies on various image processing techniques. The second detection relies on deep learning architecture called mask Region-based Convolution Neural Network (R-CNN). After that, we track the PV panels in every frame using camera data alone. The advantage of tracking the PV panels is to ensure unrepeated PV panel through tagging even if the drone flies over the panel again since each PV panel will be associated with a tag. The next step will be to test the PV panel’s proposed detection and tracking algorithm on a larger solar farm.
使用配备RTK的无人机增强光伏板检测
与化石燃料相比,太阳能由于成本降低和对环境更友好而受到很大的关注。通过对光伏电站的早期故障检测,确保正确的发电容量至关重要。我们提出了一个完全自主的解决方案,其中无人机任务被编程为遵循特定的全球定位系统(GPS)航路点。收集到的视频将经过各种图像处理技术来检测和跟踪光伏电池板。在本文中,我们尝试了两种不同的光伏板检测方法。两种检测结果都可以接受。第一次检测依赖于各种图像处理技术。第二种检测依赖于深度学习架构,称为基于掩模区域的卷积神经网络(R-CNN)。之后,我们仅使用相机数据跟踪每一帧的光伏板。跟踪光伏板的优点是,即使无人机再次飞越光伏板,也可以通过标签确保不重复的光伏板,因为每个光伏板都将与一个标签相关联。下一步将在一个更大的太阳能发电厂测试光伏板提出的检测和跟踪算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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