Enhancing Defect Classification in Solar Panels With Electroluminescence Imaging and Advanced Machine Learning Strategies

被引:1
作者
Demir, Fatih [1 ]
机构
[1] Firat Univ, Engn Fac, Software Dept, TR-23119 Elazig, Turkiye
关键词
Accuracy; Photovoltaic cells; Imaging; Solar panels; Attention mechanisms; Production; Convolutional neural networks; Feature extraction; Electroluminescence; Deep learning; Solar modules; defects; EL imaging; machine learning; classification; IMAGES; CELLS;
D O I
10.1109/ACCESS.2025.3551749
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Electroluminescence (EL) imaging is the most widely used diagnostic technique for identifying flaws at every stage of the production, installation, and operation of solar modules. This method can potentially reduce power outages by locating and fixing solar module faults such microcracks and breaks in the finger lines. The EL test is a reliable inspection method, however, because of complex fault patterns and heterogeneous backgrounds, interpreting EL images can be difficult. As a result, assessing damaged cells and determining the severity of an issue necessitates specialized knowledge, which makes manually executing these methods for each cell time-consuming. Because of this, automated visual inspection of solar cells becomes very important. In this work, a novel system for automatically identifying and categorizing solar cell faults is presented. A strong CNN model created from scratch is used to extract deep features. Utilizing the recently developed RSWS classification method, the deep characteristics are evaluated. The popular ELPV dataset with two and four classes is used to test the suggested methodology. For the two-class classification problem, the classification performance is 98.17%, and for the four-class classification problem, it is 97.02%.
引用
收藏
页码:58481 / 58495
页数:15
相关论文
共 42 条
[1]  
Acikgoz H., 2022, Firat Universitesi Muhendislik Bilim. Derg., V34, P589
[2]   AI-assisted Cell-Level Fault Detection and Localization in Solar PV Electroluminescence Images [J].
Ahan, M. R. ;
Nambi, Akshay ;
Ganu, Tanuja ;
Nahata, Dhananjay ;
Kalyanaraman, Shivkumar .
PROCEEDINGS OF THE 2021 THE 19TH ACM CONFERENCE ON EMBEDDED NETWORKED SENSOR SYSTEMS, SENSYS 2021, 2021, :485-491
[3]   Photovoltaic cell defect classification using convolutional neural network and support vector machine [J].
Ahmad, Ashfaq ;
Jin, Yi ;
Zhu, Changan ;
Javed, Iqra ;
Maqsood, Asim ;
Akram, Muhammad Waqar .
IET RENEWABLE POWER GENERATION, 2020, 14 (14) :2693-2702
[4]   CNN based automatic detection of photovoltaic cell defects in electroluminescence images [J].
Akram, M. Waqar ;
Li, Guiqiang ;
Jin, Yi ;
Chen, Xiao ;
Zhu, Changan ;
Zhao, Xudong ;
Khaliq, Abdul ;
Faheem, M. ;
Ahmad, Ashfaq .
ENERGY, 2019, 189
[5]  
Balzategui J, 2019, IEEE INT C EMERG, P529, DOI [10.1109/etfa.2019.8869359, 10.1109/ETFA.2019.8869359]
[6]  
Bartler A, 2018, EUR SIGNAL PR CONF, P2035, DOI 10.23919/EUSIPCO.2018.8553025
[7]   Quantitative Electroluminescence Imaging Analysis for Performance Estimation of PID-Influenced PV Modules [J].
Bedrich, Karl G. ;
Luo, Wei ;
Pravettoni, Mauro ;
Chen, Daming ;
Chen, Yifeng ;
Wang, Zigang ;
Verlinden, Pierre J. ;
Hacke, Peter ;
Feng, Zhiqiang ;
Chai, Jing ;
Wang, Yan ;
Aberle, Armin G. ;
Khoo, Yong Sheng .
IEEE JOURNAL OF PHOTOVOLTAICS, 2018, 8 (05) :1281-1288
[8]  
Buerhop C., 2018, 35 EUR PV SOL EN C E, P1287, DOI [10.4229/35thEUPVSEC20182018-5CV.3.15, DOI 10.4229/35THEUPVSEC20182018-5CV.3.15]
[9]   Automated defect identification in electroluminescence images of solar modules* [J].
Chen, Xin ;
Karin, Todd ;
Jain, Anubhav .
SOLAR ENERGY, 2022, 242 :20-29
[10]   Automatic classification of defective photovoltaic module cells in electroluminescence images [J].
Deitsch, Sergiu ;
Christlein, Vincent ;
Berger, Stephan ;
Buerhop-Lutz, Claudia ;
Maier, Andreas ;
Gallwitz, Florian ;
Riess, Christian .
SOLAR ENERGY, 2019, 185 :455-468