Building an Online Defect Detection System for Large-scale Photovoltaic Plants

Xiaoxia Li, Wei Li, Qiang Yang, W. Yan, Albert Y. Zomaya
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引用次数: 4

Abstract

The power efficiency of photovoltaic modules is highly correlated with their health status. Under dynamically changing environments, photovoltaic defects could spontaneously form and develop into fatal faults during the daily operation of photovoltaic plants. To facilitate defect detection with less human intervention, a nondestructive and contactless visual inspection system with the help of unmanned aerial vehicles and edge computing is proposed in this work. Limited by the resources of edge devices and the availability of images of photovoltaic defects for training, we developed an online solution combined with deep learning, data argumentation and transfer learning to properly address the issues of running resource hungry applications on edge devices and lack of training samples faced by the deep learning approaches used in the field. With the reduction of the network depth of the deep convolutional neural network model and the transfer of features from the learned defects, the resource consumption of our proposed approach is significantly reduced, and thus can be used on a wide range of edge devices to complete defect detection in a timely manner with high accuracy. To study the performance of our design, a testbed was built from open source hardware and software, and field trials were carried out in three photovoltaic plants. The experimental results clearly demonstrate the practicality and effectiveness of our design for detecting visible defects on photovoltaic modules.
大型光伏电站在线缺陷检测系统的构建
光伏组件的功率效率与其健康状态高度相关。在动态变化的环境下,光伏缺陷会在光伏电站的日常运行中自发形成并发展成为致命故障。为了减少人为干预,方便缺陷检测,本文提出了一种基于无人机和边缘计算的无损非接触式视觉检测系统。受边缘设备资源和光伏缺陷图像可用性的限制,我们开发了一种结合深度学习、数据论证和迁移学习的在线解决方案,以适当解决在边缘设备上运行资源匮乏的应用程序以及该领域使用的深度学习方法所面临的缺乏训练样本的问题。随着深度卷积神经网络模型的网络深度的减小和特征从学习到的缺陷中迁移,我们所提出的方法大大减少了资源消耗,从而可以在大范围的边缘设备上使用,及时、高精度地完成缺陷检测。为了研究设计的性能,利用开源硬件和软件搭建了一个测试平台,并在三个光伏电站进行了现场试验。实验结果清楚地证明了我们设计的检测光伏组件可见缺陷的实用性和有效性。
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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