Fault Classification for Photovoltaic modules using Thermography and Image Processing

V. S. Kurukuru, A. Haque, Mohammed Ali Khan
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引用次数: 10

Abstract

For reliable and efficient operation of solar photovoltaic (PV) system it is necessary to detect and analysis fault. Especially in the case of PV arrays, it is difficult to shut down the modules completely during faults, due to their continuous operation during sunlight and conventional series-parallel PV configurations. This paper observed existing fault detection and classification solutions for PV modules and identifies their challenges and limitations. Since the detection of defects, it is mostly based on the heat radiated from the solar cells, interference of other heat emitting bodies will result in false identification and misinterpretation of the faults. Therefore, it is very essential that the background elements or any external noises need to be eliminated from the image before processing it to fault identification. In this paper, edge detection and Hough transform based image processing techniques were adapted for efficient identification of faults. The processed image is subjected to feature extraction and passed through a classification algorithm for localization and identification of the type of fault. The experiment results depict the training and testing accuracy of the developed technique which are around 94 and 93.1% respectively which are better than conventional methods.
基于热成像和图像处理的光伏组件故障分类
为了保证太阳能光伏发电系统的可靠、高效运行,对故障进行检测和分析是十分必要的。特别是在光伏阵列中,由于组件在阳光下连续工作以及传统的串并联光伏配置,在故障期间很难完全关闭组件。本文观察了现有的光伏组件故障检测和分类解决方案,并指出了它们的挑战和局限性。由于缺陷的检测,大多是基于太阳能电池的热辐射,其他发热体的干扰会导致错误的识别和错误的解释故障。因此,在对图像进行故障识别处理之前,必须先去除图像中的背景元素或任何外部噪声。本文采用边缘检测和基于霍夫变换的图像处理技术对故障进行有效识别。处理后的图像进行特征提取,并通过分类算法进行故障类型的定位和识别。实验结果表明,该方法的训练精度和测试精度分别为94%和93.1%,优于传统方法。
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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