基于深度学习的光伏组件表面小目标遮挡检测算法

Xiaoguang Ma, Bitong Han, Hongbin Xie, Yu Shan
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引用次数: 0

摘要

太阳能的应用越来越广泛,但光伏也容易受到环境因素的影响。由于光伏电站地处偏远,人工清洗表面覆盖物非常困难。然而,机器人清洁的使用取决于对屏蔽物体的准确识别。由于屏蔽对象种类繁多,目前的技术很难准确识别。针对光伏板落叶类型复杂、难以清理的特点,提出了一种基于深度学习的光伏组件表面小目标遮挡检测算法,并讨论了快速检测树叶遮挡并确定光伏板遮挡位置的模型网络方法。本文提出了一种改进的YOLO-PX算法,用于光伏组件遮挡的识别和分类。采用原始的YOLO算法和改进的YOLO- px算法在光伏电站现场数据集上进行了目标检测实验。实验结果表明,改进后的算法效果良好,检测准确率和召回率分别达到96.3%和94.2%。该方法可为光伏电站的智能化运维提供技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An occlusion detection algorithm for small targets on the surface of photovoltaic modules based on deep learning
Solar energy is more and more widely used, but photovoltaic is also easily affected by environmental factors. Because of the remote location of the photovoltaic power station, it is very difficult to clean the surface cover manually. However, the use of robot cleaning depends on the accurate identification of the shielding objects. Due to the wide variety of shielding objects, the current technology is difficult to identify accurately. In view of the fact that the types of fallen leaves of photovoltaic panels are complex and difficult to clean, An occlusion detection algorithm for small targets on the surface of photovoltaic modules based on deep learning is proposed, and the model network method for quickly detecting leaf occlusion and determining the occlusion position of photovoltaic panels is discussed. In this paper, an improved YOLO-PX algorithm is proposed to identify and classify the occlusion of photovoltaic modules. Target detection experiments are carried out on the field data set of photovoltaic power station by using the original YOLO algorithm and the improved YOLO-PX algorithm. The experimental results show that the effect of the improved algorithm is good, and the detection accuracy and recall rate are 96.3% and 94.2% respectively. This method can provide technical support for the intelligent operation and maintenance of photovoltaic power station.
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