Infrared imaging of photovoltaic modules: a review of the state of the art and future challenges facing gigawatt photovoltaic power stations

IF 32 1区 工程技术 Q1 ENERGY & FUELS Progress in Energy and Combustion Science Pub Date : 2022-08-11 DOI:10.1088/2516-1083/ac890b
C. Buerhop, Lukas Bommes, Jan Schlipf, Tobias Pickel, Andreas Fladung, I. M. Peters
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引用次数: 11

Abstract

Thermography is a frequently used and appreciated method to detect underperforming Photovoltaic modules in solar power stations. With the review, we give insights on two aspects: (a) are the developed measurement strategies highly efficient (about 1 module s−1) to derive timely answers from the images for operators of multi-Mega Warr peak power stations, and (b) do Photovoltaic stakeholders get answers on the relevance of thermal anomalies for further decisions. Following these questions, the influence of measurement conditions, image and data collection, image evaluation as well as image assessment are discussed. From the literature it is clear that automated image acquisition with manned and unmanned aircrafts allow to capture more than 1 module s−1. This makes it possible to achieve almost identical measurement conditions for the modules; however, it is documented to what extent the increase in speed is achieved at the expense of image resolution. Many image processing tools based on machine learning (ML) have been developed and show the potential for analysis of infrared (IR) images and defect classification. There are different approaches to evaluating IR anomalies in terms of impact on performance, yield or degradation, of individual modules or modules in a string configuration. It is clear that the problem is very complex and multi-layered. On the one hand, information on the electrical interconnection is necessary, and on the other hand, there is a lack of sufficient and suitable data sets to adapt existing computer vision tools to Photovolatics. This is where we see the greatest need for action and further development to increase the expressiveness of IR images for PV stakeholder. We conclude with recommendations to improve the outcome of IR-images and encourage the generation of suitable public data sets of IR-footage for the development of ML tools.
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光伏组件的红外成像:回顾吉瓦光伏电站的技术现状和未来面临的挑战
热成像技术是一种常用的检测太阳能电站中性能不佳的光伏组件的方法。通过回顾,我们给出了两个方面的见解:(a)开发的测量策略是否高效(约1个模块s−1),以便为多兆瓦峰值电站的运营商从图像中及时获得答案,以及(b)光伏利益相关者是否获得热异常相关性的答案,以便进一步决策。针对这些问题,讨论了测量条件、图像和数据采集、图像评价和图像评价的影响。从文献中可以清楚地看出,有人驾驶和无人驾驶飞机的自动图像采集允许捕获超过1个模块s - 1。这使得可以实现几乎相同的测量条件的模块;然而,在何种程度上,速度的提高是以牺牲图像分辨率为代价的。许多基于机器学习(ML)的图像处理工具已经被开发出来,并显示出红外(IR)图像分析和缺陷分类的潜力。根据对单个模块或管柱配置中的模块的性能、产量或退化的影响,有不同的方法来评估IR异常。很明显,这个问题是非常复杂和多层次的。一方面,关于电气互连的信息是必要的,另一方面,缺乏足够和合适的数据集来使现有的计算机视觉工具适应光伏。这是我们认为最需要采取行动和进一步发展的地方,以提高光伏利益相关者的红外图像的表现力。最后,我们提出了改善红外图像结果的建议,并鼓励为ML工具的开发生成合适的红外镜头公共数据集。
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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来源期刊
Progress in Energy and Combustion Science
Progress in Energy and Combustion Science 工程技术-工程:化工
CiteScore
59.30
自引率
0.70%
发文量
44
审稿时长
3 months
期刊介绍: Progress in Energy and Combustion Science (PECS) publishes review articles covering all aspects of energy and combustion science. These articles offer a comprehensive, in-depth overview, evaluation, and discussion of specific topics. Given the importance of climate change and energy conservation, efficient combustion of fossil fuels and the development of sustainable energy systems are emphasized. Environmental protection requires limiting pollutants, including greenhouse gases, emitted from combustion and other energy-intensive systems. Additionally, combustion plays a vital role in process technology and materials science. PECS features articles authored by internationally recognized experts in combustion, flames, fuel science and technology, and sustainable energy solutions. Each volume includes specially commissioned review articles providing orderly and concise surveys and scientific discussions on various aspects of combustion and energy. While not overly lengthy, these articles allow authors to thoroughly and comprehensively explore their subjects. They serve as valuable resources for researchers seeking knowledge beyond their own fields and for students and engineers in government and industrial research seeking comprehensive reviews and practical solutions.
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