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2024 | OriginalPaper | Buchkapitel

Enhancing the Reliability and Efficiency of Solar Systems Through Fault Detection in Solar Cells Using Electroluminescence (EL) Images and YOLO Version 5.0 Algorithm

verfasst von : Naima El yanboiy, Mohamed Khala, Ismail Elabbassi, Nourddine Elhajrat, Omar Eloutassi, Youssef El hassouani, Choukri Messaoudi, Ali Omari Alaoui

Erschienen in: Sustainable and Green Technologies for Water and Environmental Management

Verlag: Springer Nature Switzerland

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Abstract

The importance of solar energy as a renewable power source has led to increased adoption of solar modules for electricity generation. However, faults in solar cells can significantly impact their performance and efficiency. Manual defect detection is time-consuming and subjective, hence the need for an intelligent and efficient detection solution. In this study, we propose a method for detecting defective solar cells in electroluminescence imaging using an advanced object detection algorithm, specifically YOLO5 version. An important step in the algorithm is to formulate the detection problem in terms of real-time detection of defects. We evaluate our method on a dataset of different types of solar modules containing a total of 240 solar cells with various defects, including finger interruptions, microcracks, electrically separated or degraded cell parts and material defects. Experimental evaluation on solar cell images extracted from high-resolution electroluminescence images of photovoltaic modules datasets reveals that the proposed framework successfully mitigates the influence of defect image degradation. The precision and recall confidence curves indicate a moderate performance, suggesting that the framework shows promising capabilities in detecting and localizing defects. This research contributes to the widespread adoption and sustainable utilization of solar energy, ensuring the optimal performance and longevity of solar cells.

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Literatur
Zurück zum Zitat Abbas MN, Zhang D (2021) A smart fault detection approach for PV modules using adaptive neuro-fuzzy inference framework. Energy Rep Abbas MN, Zhang D (2021) A smart fault detection approach for PV modules using adaptive neuro-fuzzy inference framework. Energy Rep
Zurück zum Zitat Açikgöz H, Korkmaz D (2022) Automatic classification of defective photovoltaic module cells in electroluminescence images. Fırat Üniversitesi Mühendislik Bilimleri Dergisi Açikgöz H, Korkmaz D (2022) Automatic classification of defective photovoltaic module cells in electroluminescence images. Fırat Üniversitesi Mühendislik Bilimleri Dergisi
Zurück zum Zitat Aghaei M et al (2022) Review of degradation and failure phenomena in photovoltaic modules. Renew Sustain Energy Rev Aghaei M et al (2022) Review of degradation and failure phenomena in photovoltaic modules. Renew Sustain Energy Rev
Zurück zum Zitat Chen Z et al (2017) Intelligent fault diagnosis of photovoltaic arrays based on optimized kernel extreme learning machine and I–V characteristics. Appl Energy Chen Z et al (2017) Intelligent fault diagnosis of photovoltaic arrays based on optimized kernel extreme learning machine and I–V characteristics. Appl Energy
Zurück zum Zitat Chen Z et al (2018) Random forest based intelligent fault diagnosis for PV arrays using array voltage and string currents. Energy Conv Manag Chen Z et al (2018) Random forest based intelligent fault diagnosis for PV arrays using array voltage and string currents. Energy Conv Manag
Zurück zum Zitat Dhanraj JA et al (2021) An effective evaluation on fault detection in solar panels. Energies Dhanraj JA et al (2021) An effective evaluation on fault detection in solar panels. Energies
Zurück zum Zitat Han SH et al (2021) Detection of faults in solar panels using deep learning. In: 2021 international conference on electronics, information, and communication (ICEIC) Han SH et al (2021) Detection of faults in solar panels using deep learning. In: 2021 international conference on electronics, information, and communication (ICEIC)
Zurück zum Zitat Hwang M-H et al (2021) A study on the improvement of efficiency by detection solar module faults in deteriorated photovoltaic power plants. Appl Sci Hwang M-H et al (2021) A study on the improvement of efficiency by detection solar module faults in deteriorated photovoltaic power plants. Appl Sci
Zurück zum Zitat Madeti SR, Singh S (2017) A comprehensive study on different types of faults and detection techniques for solar photovoltaic system. Solar Energy Madeti SR, Singh S (2017) A comprehensive study on different types of faults and detection techniques for solar photovoltaic system. Solar Energy
Zurück zum Zitat Malta A et al (2021) Augmented reality maintenance assistant using YOLOv5. Appl Sci Malta A et al (2021) Augmented reality maintenance assistant using YOLOv5. Appl Sci
Zurück zum Zitat Rabaia MK, Hussien et al (2020) Environmental impacts of solar energy systems: a review. Sci Total Environ Rabaia MK, Hussien et al (2020) Environmental impacts of solar energy systems: a review. Sci Total Environ
Zurück zum Zitat Sager C et al (2021) A survey of image labelling for computer vision applications. J Bus Anal Sager C et al (2021) A survey of image labelling for computer vision applications. J Bus Anal
Zurück zum Zitat Shubbak MH (2019) Advances in solar photovoltaics: technology review and patent trends. Renew Sustain Energy Rev Shubbak MH (2019) Advances in solar photovoltaics: technology review and patent trends. Renew Sustain Energy Rev
Zurück zum Zitat Zhang J et al (2023) An improved YOLOv5-based underwater object-detection framework. Sensor Zhang J et al (2023) An improved YOLOv5-based underwater object-detection framework. Sensor
Metadaten
Titel
Enhancing the Reliability and Efficiency of Solar Systems Through Fault Detection in Solar Cells Using Electroluminescence (EL) Images and YOLO Version 5.0 Algorithm
verfasst von
Naima El yanboiy
Mohamed Khala
Ismail Elabbassi
Nourddine Elhajrat
Omar Eloutassi
Youssef El hassouani
Choukri Messaoudi
Ali Omari Alaoui
Copyright-Jahr
2024
DOI
https://doi.org/10.1007/978-3-031-52419-6_4