Identifying defects on solar cells using magnetic field measurements and artificial intelligence trained by a finite-element-model

IF 1.9 Q3 PHYSICS, APPLIED EPJ Photovoltaics Pub Date : 2023-01-01 DOI:10.1051/epjpv/2023005
K. Buehler, K. Kaufmann, Markus Patzold, Mawe Sprenger, S. Schoenfelder
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引用次数: 1

Abstract

Renewable energies have an increasing share in the energy supply. In order to ensure the security of this supply, the reliability of the systems is therefore increasingly important. In photovoltaic modules or in manufacturing, defective solar cells due to broken busbars, cross-connectors or faulty solder joints must be detected and repaired quickly and reliably. This paper shows how the magnetic field imaging method can be used to detect defects in solar cells and modules without contact during operation. For the evaluation of the measurement data several neural networks were used, which were trained with the help of results from finite element simulations. Different training data sets were set up in the simulation model by varying the electrical conductivities of the different parts of the solar cell. The influence of the neural network type and the variation of the training data sets as well as an advantage of a combination of simulated and experimental training data are presented and discussed.
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利用磁场测量和由有限元模型训练的人工智能识别太阳能电池缺陷
可再生能源在能源供应中所占的份额越来越大。因此,为了确保电力供应的安全,系统的可靠性变得越来越重要。在光伏组件或制造过程中,由于母线断裂、交叉连接器或焊点故障而导致的太阳能电池缺陷必须快速可靠地检测和修复。本文介绍了如何利用磁场成像方法在无接触的情况下检测太阳能电池和组件的缺陷。为了对测量数据进行评估,使用了几个神经网络,这些神经网络在有限元模拟结果的帮助下进行了训练。通过改变太阳能电池不同部位的电导率,在仿真模型中建立不同的训练数据集。讨论了神经网络类型的影响和训练数据集的变化,以及模拟训练数据和实验训练数据相结合的优势。
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来源期刊
EPJ Photovoltaics
EPJ Photovoltaics PHYSICS, APPLIED-
CiteScore
2.30
自引率
4.00%
发文量
15
审稿时长
8 weeks
期刊最新文献
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