A UAV infrared measurement approach for defect detection in photovoltaic plants

P. Addabbo, A. Angrisano, M. Bernardi, Graziano Gagliarde, A. Mennella, Marco Nisi, S. Ullo
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引用次数: 45

Abstract

In the last two decades, the increased production and installation of photovoltaic (PV) plants worldwide has asked for efficient low-cost methods for PV plant inspection to monitor their functionality and guaranteed their performance. To lower maintenance costs new systems have been thought to substitute human workers inspecting the PV plants. The employment of Unmanned Aerial Vehicles (UAVs) has allowed realizing a fast detection of defects and problems arisen in PV plants thanks to the fusion of computer vision algorithms and high accuracy Global Navigation Satellite System (GNSS) positioning techniques able to detect and tag anomalies and identify the defective panels. Authors in this paper intend to present the state-of-the-art in the Computer Vision field applied to PV plant inspection and to thermal anomalies detection over the panels. In addition, different data sets have been recorded and compared for geo-referencing the solar panels. They have been derived through the U-blox NEO-M8N installed on board of the UAV used for inspection. Although the U-blox NEO-M8N measures are less accurate than the classic RTK GNSS ones, the measurements obtained with this handset introduce a very interesting novelty since initial services of the Galileo constellation, supported by the NEO-M8N GNSS module, have become available only since last December. Future testing and validation will be performed by using geo-referenced data from the RTK GNSS receiver, that has been ordered with a specially customized antenna whose specifications have been properly designed and sent to the manufacturer for its fabrication. Next campaigns will allow to get results also from this RTK receiver and to properly validate the proposed algorithm, by comparing new results with those found through the employment of U-blox receiver.
一种用于光伏电站缺陷检测的无人机红外测量方法
在过去的二十年中,随着全球光伏电站的生产和安装的增加,需要一种高效、低成本的光伏电站检测方法来监测其功能并保证其性能。为了降低维护成本,人们认为新系统可以代替人工检查光伏电站。由于计算机视觉算法和高精度全球导航卫星系统(GNSS)定位技术的融合,能够检测和标记异常并识别缺陷面板,无人机(uav)的使用可以实现对光伏电站出现的缺陷和问题的快速检测。本文的作者打算介绍计算机视觉领域应用于光伏电站检测和面板热异常检测的最新技术。此外,还记录和比较了不同的数据集,以便对太阳能电池板进行地理参考。它们是通过安装在用于检查的无人机上的U-blox NEO-M8N衍生的。虽然U-blox NEO-M8N测量结果不如经典的RTK GNSS测量结果准确,但由于NEO-M8N GNSS模块支持的伽利略星座的初始服务仅在去年12月才可用,因此这款手机获得的测量结果引入了一个非常有趣的新奇事物。未来的测试和验证将使用来自RTK GNSS接收器的地理参考数据进行,该接收器已订购了一种特殊定制的天线,其规格已经过适当设计并发送给制造商进行制造。接下来的活动将允许从这个RTK接收器获得结果,并通过将新结果与通过使用U-blox接收器发现的结果进行比较来适当验证所提出的算法。
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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