基于机器视觉的高密度太阳能板热点检测的创新高速方法

Q2 Engineering Energy Harvesting and Systems Pub Date : 2022-12-05 DOI:10.1515/ehs-2022-0100
H. Yazdani, M. Radmehr, Alireza Ghorbani
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引用次数: 0

摘要

光伏板出现热点是太阳能电站最常见的问题之一,不仅会降低光伏阵列的输出功率,还会对太阳能电池造成不可修复的损伤。有几种方法可以识别热点,包括使用使用热像仪图像的自定义数据集,这些数据集稍后将用于教授YOLO和Faster R-CNN计算机视觉算法。在实践中,观察到YOLO算法在高密度太阳能电池板中比faster R-CNN快许多倍。因此,该方法是大型光伏电站自动热点检测提高整体效率的最安全选择。在本文中,通过比较Faster R-CNN和YOLO算法的性能,我们得出YOLO算法在检测质量和速度方面具有更好的优势。因此,这一因素使得使用YOLO显著有助于加快太阳能组件因热点引起的故障排除,从长远来看,这一因素提高了太阳能发电厂的效率。同时,在本文的研究中,我们对Python提取的结果进行了优化,将其作为一种算法用于热点检测。
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Innovative high-speed method for detecting hotspots in high-density solar panels by machine vision
Abstract The occurrence of hotspots in photovoltaic panels is one of the most common problems of solar power plants, which reduces the output power of photovoltaic arrays and can also cause irreparable damage to the solar cells. There are several ways to identify hotspots, including using custom datasets using thermographic camera images, which will be later used to teach YOLO and Faster R-CNN computer vision algorithms. In practice, it is observed that the YOLO algorithm is many times faster than the Faster R-CNN in high-density solar panels. Therefore, the applied method is the safest choice for automatic hotspot detection in large-scale photovoltaic power plants to improve overall efficiency. In this paper, by comparing the performance of methods such as Faster R-CNN with YOLO, we concluded that the YOLO algorithm has far better advantages in terms of quality of detection, and speed. Therefore, this factor makes the use of YOLO significantly helps to speed up the troubleshooting of solar modules caused by hotspots, and this factor improves the efficiency of solar power plants in the long run. Meanwhile, in the studies for this paper, the results extracted by Python have been optimized as an algorithm to be used for hotspot detection.
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来源期刊
Energy Harvesting and Systems
Energy Harvesting and Systems Energy-Energy Engineering and Power Technology
CiteScore
2.00
自引率
0.00%
发文量
31
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