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Quantification of Damages and Classification of Flaws in Mono-Crystalline Photovoltaic Cells Through the Application of Vision Transformers | IEEE Journals & Magazine | IEEE Xplore

Quantification of Damages and Classification of Flaws in Mono-Crystalline Photovoltaic Cells Through the Application of Vision Transformers


Detecting, classifying and quantifying the damage of possible flaws in a photovoltaic cells using vision transformer and additional image processing.

Abstract:

This work introduces new effective methodologies for the detection, analysis, and classification of diverse defects that may occur throughout the production process of ph...Show More

Abstract:

This work introduces new effective methodologies for the detection, analysis, and classification of diverse defects that may occur throughout the production process of photovoltaic panels. In this context, this work proposes a novel approach that combines Image Processing and Vision Transformers (ViT) to address this challenge. The results of this work comprise a light flaw-type classifier based on ViT, along with computational tools to calculate the length of cracks and the proportional damaged area caused by flaws without requiring the training of other models. The proposed ViT-μ model achieved high accuracy in flaw detection and classification for solar cells, with rates of nearly 98% and 94%, respectively; achieved with a mere one-hour training duration. Moreover, this study introduces a weakly supervised method of visualizing the detected defects within a solar cell, by using attention maps.
Detecting, classifying and quantifying the damage of possible flaws in a photovoltaic cells using vision transformer and additional image processing.
Published in: IEEE Access ( Volume: 11)
Page(s): 112334 - 112347
Date of Publication: 06 October 2023
Electronic ISSN: 2169-3536

Funding Agency:


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