基于轻量化SSD的光伏板热点识别

Hongbin Li, Peng Li
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引用次数: 1

摘要

针对光伏板人工运维效率低、成本高的问题,提出了一种基于无人机和目标检测算法的光伏板热点智能识别技术。当光强分布不均匀时,光伏板可能产生热点效应,损坏光伏电池组件,导致系统故障。本研究提出了一种轻量级的基于ssd的光伏板热点识别方法,该方法解决了目标检测复杂度高和算法在边缘设备上难以实现的问题。采用Resnet50代替VGG16作为骨干网,降低了模型的复杂度。为了提高模型的精度,完成太阳能组件热点的识别,引入了金字塔模块和坐标关注模块。在航拍光伏板数据集上测试,所提模型的mAP达到86.28%,比原SSD目标检测算法提高2.58%,所提模型压缩了35.90%的参数和48.47%的计算量,能够满足将模型携带到无人机上的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Photovoltaic Panel Hot Spot Recognition Based on Lightweight SSD
An intelligent recognition technique of photovoltaic panel hot spot based on UAV and target detection algorithm is proposed in order to address the issues of low efficiency and high cost of manual operation and maintenance of photovoltaic panels. When the light intensity distribution is uneven, the photovoltaic panel may produce hot spot effect, damage the photovoltaic cell module, and cause system failure. In this research, a lightweight SSD-based photovoltaic panel hot spot recognition method is proposed, which addresses the issues of high target detection complexity and difficulties in implementing the algorithm on edge devices. The complexity of the model is decreased by using Resnet50 as the backbone network in place of VGG16. To increase the model's accuracy and complete the identification of solar module hot spots, the pyramid module and the Coordinate Attention module are introduced. Tested on the aerial photovoltaic panel dataset, the mAP of the proposed model reaches 86.28%, which is 2.58% higher than the original SSD target detection algorithm, and the proposed model compresses 35.90% of parameters and 48.47% of the calculation, which can meet the requirements of carrying the model to the UAV.
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