PV-S3: Advancing Automatic Photovoltaic Defect Detection using Semi-Supervised Semantic Segmentation of Electroluminescence Images
Abstract: Photovoltaic (PV) systems allow us to tap into all abundant solar energy, however they require regular maintenance for high efficiency and to prevent degradation. Traditional manual health check, using Electroluminescence (EL) imaging, is expensive and logistically challenging which makes automated defect detection essential. Current automation approaches require extensive manual expert labeling, which is time-consuming, expensive, and prone to errors. We propose PV-S3 (Photovoltaic-Semi Supervised Segmentation), a Semi-Supervised Learning approach for semantic segmentation of defects in EL images that reduces reliance on extensive labeling. PV-S3 is a Deep learning model trained using a few labeled images along with numerous unlabeled images. We introduce a novel Semi Cross-Entropy loss function to deal with class imbalance. We evaluate PV-S3 on multiple datasets and demonstrate its effectiveness and adaptability. With merely 20% labeled samples, we achieve an absolute improvement of 9.7% in IoU, 13.5% in Precision, 29.15% in Recall, and 20.42% in F1-Score over prior state-of-the-art supervised method (which uses 100% labeled samples) on UCF-EL dataset (largest dataset available for semantic segmentation of EL images) showing improvement in performance while reducing the annotation costs by 80%. For more details, visit our GitHub repository:https://github.com/abj247/PV-S3.
- Review of artificial intelligence-based failure detection and diagnosis methods for solar photovoltaic systems. Machines, 9(12):328, 2021.
- Ai-assisted cell-level fault detection and localization in solar pv electroluminescence images. In Proceedings of the 19th ACM Conference on Embedded Networked Sensor Systems, pages 485–491, 2021.
- Failures of photovoltaic modules and their detection: A review. Applied Energy, 313:118822, 2022.
- Cnn based automatic detection of photovoltaic cell defects in electroluminescence images. Energy, 189:116319, 2019.
- Lock-in thermography: a versatile tool for failure analysis of solar cells. Electronic Device Failure Analysis, 11(3):6–12, 2009.
- Karl G Bedrich. Quantitative electroluminescence measurements of PV devices. PhD thesis, Loughborough University, 2017.
- Spatially and spectrally resolved electroluminescence measurement system for photovoltaic characterisation. IET Renewable Power Generation, 9(5):446–452, 2015.
- A benchmark for visual identification of defective solar cells in electroluminescence imagery. In European PV Solar Energy Conference and Exhibition (EU PVSEC), 2018.
- Random forest based intelligent fault diagnosis for pv arrays using array voltage and string currents. Energy conversion and management, 178:250–264, 2018.
- A review of computer tools for analysing the integration of renewable energy into various energy systems. Applied energy, 87(4):1059–1082, 2010.
- Electroluminescence excitation spectroscopy: A novel approach to non-contact quantum efficiency measurements. In 2017 IEEE 44th Photovoltaic Specialist Conference (PVSC), pages 3448–3451. IEEE, 2017.
- Segmentation of photovoltaic module cells in uncalibrated electroluminescence images. Machine Vision and Applications, 32(4), 2021.
- Automatic classification of defective photovoltaic module cells in electroluminescence images. Solar Energy, 185:455–468, 2019.
- Automatic classification of defective photovoltaic module cells in electroluminescence images. Solar Energy, 185:455–468, June 2019.
- Mahmoud Dhimish. Micro cracks distribution and power degradation of polycrystalline solar cells wafer: Observations constructed from the analysis of 4000 samples. Renewable Energy, 145:466–477, 2020.
- Solar cells micro crack detection technique using state-of-the-art electroluminescence imaging. Journal of Science: Advanced Materials and Devices, 4(4):499–508, 2019.
- The impact of cracks on photovoltaic power performance. Journal of Science: Advanced Materials and Devices, 2(2):199–209, 2017.
- Pv output power enhancement using two mitigation techniques for hot spots and partially shaded solar cells. Electric Power Systems Research, 158:15–25, 2018.
- Study on snail trail formation in pv module through modeling and accelerated aging tests. Solar Energy Materials and Solar Cells, 164:80–86, 2017.
- Automated defect detection and localization in photovoltaic cells using semantic segmentation of electroluminescence images. IEEE Journal of Photovoltaics, 12(1):53–61, 2021.
- Nondestructive characterization of solar pv cells defects by means of electroluminescence, infrared thermography, i–v curves and visual tests: Experimental study and comparison. Energy, 205:117930, 2020.
- Pv plant digital mapping for modules’ defects detection by unmanned aerial vehicles. IET Renewable Power Generation, 11(10):1221–1228, 2017.
- Solar energy as renewable energy source: Swot analysis. In 2019 4th MEC International Conference on Big Data and Smart City (ICBDSC), pages 1–5, 2019.
- Enhancing solar photovoltaic modules quality assurance through convolutional neural network-aided automated defect detection. Renewable Energy, 219:119389, 2023.
- Intelligent cleanup scheme for soiled photovoltaic modules. Energy, 265:126293, 2023.
- Steve Johnston. Contactless electroluminescence imaging for cell and module characterization. In 2015 IEEE 42nd Photovoltaic Specialist Conference (PVSC), pages 1–6. IEEE, 2015.
- Criticality of cracks in pv modules. Energy Procedia, 27:658–663, 2012.
- Solar energy for future world:-a review. Renewable and sustainable energy reviews, 62:1092–1105, 2016.
- Automated pipeline for photovoltaic module electroluminescence image processing and degradation feature classification. IEEE Journal of Photovoltaics, 9(5):1324–1335, 2019.
- Fault diagnosis of photovoltaic modules using deep neural networks and infrared images under algerian climatic conditions. Energy, 263:125902, 2023.
- Reciprocity between electroluminescence and quantum efficiency used for the characterization of silicon solar cells. Progress in Photovoltaics: Research and Applications, 17(6):394–402, 2009.
- Modelling of conditions for accelerated lifetime testing of humidity impact on pv-modules based on monitoring of climatic data. Solar Energy Materials and Solar Cells, 99:282–291, 2012.
- Application of artificial neural networks to photovoltaic fault detection and diagnosis: A review. Renewable and Sustainable Energy Reviews, 138:110512, 2021.
- Perturbed and strict mean teachers for semi-supervised semantic segmentation. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pages 4258–4267, 2022.
- Siva Ramakrishna Madeti and SN Singh. Modeling of pv system based on experimental data for fault detection using knn method. Solar Energy, 173:139–151, 2018.
- Defect object detection algorithm for electroluminescence image defects of photovoltaic modules based on deep learning. Energy Science & Engineering, 10(3):800–813, 2022.
- An overview of deep semi-supervised learning. arXiv preprint arXiv:2006.05278, 2020.
- Detecting the foreign matter defect in lithium-ion batteries based on battery pilot manufacturing line data analyses. Energy, 262:125502, 2023.
- Defect detection and quantification in electroluminescence images of solar pv modules using u-net semantic segmentation. Renewable Energy, 178:1211–1222, 2021.
- A benchmark dataset for defect detection and classification in electroluminescence images of pv modules using semantic segmentation. Systems and Soft Computing, page 200048, 2023.
- Quantitative estimation of electrical performance parameters of individual solar cells in silicon photovoltaic modules using electroluminescence imaging. Solar Energy, 173:201–208, 2018.
- Photovoltaic cell defect detection model based-on extracted electroluminescence images using svm classifier. In 2020 International Conference on Artificial Intelligence in Information and Communication (ICAIIC), pages 578–582, 2020.
- Potential of solar energy in developing countries for reducing energy-related emissions. Renewable and Sustainable Energy Reviews, 90:275–291, 2018.
- Deep learning for fault diagnostics in bearings, insulators, pv panels, power lines, and electric vehicle applications—the state-of-the-art approaches. IEEE Access, 9:41246–41260, 2021.
- Module defect detection and diagnosis for intelligent maintenance of solar photovoltaic plants: Techniques, systems and perspectives. Energy, page 131222, 2024.
- Deep learning based automatic defect identification of photovoltaic module using electroluminescence images. Solar Energy, 201:453–460, 2020.
- Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results. Advances in neural information processing systems, 30, 2017.
- Photoluminescence imaging for photovoltaic applications. Energy Procedia, 15:135–146, 2012.
- Defect detection of solar cells in electroluminescence images using fourier image reconstruction. Solar Energy Materials and Solar Cells, 99:250–262, 2012.
- FJ Vorster and EE Van Dyk. High saturation solar light beam induced current scanning of solar cells. Review of scientific instruments, 78(1), 2007.
- Solar irradiation nowcasting by stochastic persistence: A new parsimonious, simple and efficient forecasting tool. Renewable and Sustainable Energy Reviews, 92:343–352, 2018.
- Crack detection in photovoltaic cells by interferometric analysis of electronic speckle patterns. Solar energy materials and solar cells, 98:216–223, 2012.
- Pv cell cracks and impacts on electrical performance. In 2020 47th IEEE Photovoltaic Specialists Conference (PVSC), pages 1417–1422. IEEE, 2020.
- Detection of surface defects on solar cells by fusing multi-channel convolution neural networks. Infrared Physics & Technology, 108:103334, 2020.
- Hrnet-based automatic identification of photovoltaic module defects using electroluminescence images. Energy, 267:126605, 2023.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.