A novel object recognition method for photovoltaic (PV) panel occlusion based on deep learning

IF 0.5 Q4 ENGINEERING, MULTIDISCIPLINARY Journal of Computational Methods in Sciences and Engineering Pub Date : 2023-12-15 DOI:10.3233/jcm-237108
Jing Yu, Rongqiang Guan, Cungui Zhang, Fang Shao
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Abstract

During the long-term operation of the photovoltaic (PV) system, occlusion will reduce the solar radiation energy received by the PV module, as well as the photoelectric conversion efficiency and economy. However, the occlusion detection of the PV power station has the defects of low efficiency, poor accuracy, and untimely detection, which will cause unknown system losses. Based on the deep learning algorithm, this paper conducts research on PV module occlusion detection. In order to accurately obtain the occlusion area and position information of the PV panel, a PV module occlusion detection model based on the Segment-You Only Look Once (Seg-YOLO) algorithm is established. Based on the YOLOv5 algorithm, the loss function is modified, the Segment Head detection module is introduced, and the convolutional block attention module (CBAM) attention mechanism is added to achieve the accurate detection of small targets by the algorithm model and the fast detection of the PV module occlusion area identify. The model performance research is carried out on three types of occlusion datasets: leaf, bird dropping, and shadow. According to the experimental results, the proposed model has better recognition accuracy and speed than SSD, Faster-Rcnn, YOLOv4, and U-Net. The precision rate, recall rate, and recognition speed can reach 90.52%, 92.41%, and 92.3 FPS, respectively. This model can lay a theoretical foundation for the intelligent operation and maintenance of PV systems.
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基于深度学习的新型光伏(PV)面板遮挡物体识别方法
在光伏(PV)系统的长期运行过程中,遮挡会降低光伏组件接收到的太阳辐射能量,降低光电转换效率和经济性。然而,光伏电站的遮挡检测存在效率低、精度差、检测不及时等缺陷,会造成未知的系统损失。本文基于深度学习算法,对光伏组件闭塞检测进行了研究。为了准确获取光伏面板的遮挡区域和位置信息,建立了基于分段-只看一次(Segment-YOU Only Look Once,Seg-YOLO)算法的光伏组件遮挡检测模型。在 YOLOv5 算法的基础上,修改了损失函数,引入了段头检测模块,增加了卷积块注意模块(CBAM)注意机制,实现了算法模型对小目标的精确检测和光伏模块遮挡区域识别的快速检测。在树叶、鸟滴和阴影三种遮挡数据集上进行了模型性能研究。实验结果表明,与 SSD、Faster-Rcnn、YOLOv4 和 U-Net 相比,所提出的模型具有更好的识别精度和识别速度。精确率、召回率和识别速度分别达到 90.52%、92.41% 和 92.3 FPS。该模型可为光伏系统的智能运维奠定理论基础。
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CiteScore
0.80
自引率
0.00%
发文量
152
期刊介绍: The major goal of the Journal of Computational Methods in Sciences and Engineering (JCMSE) is the publication of new research results on computational methods in sciences and engineering. Common experience had taught us that computational methods originally developed in a given basic science, e.g. physics, can be of paramount importance to other neighboring sciences, e.g. chemistry, as well as to engineering or technology and, in turn, to society as a whole. This undoubtedly beneficial practice of interdisciplinary interactions will be continuously and systematically encouraged by the JCMSE.
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