Electroluminescence Images for Solar Cell Fault Detection Using Deep Learning for Binary and Multiclass Classification
In this study, an automatic solar defect detection and classification system using deep learning was proposed. This study focuses on solar faults in photovoltaic systems identified through Electroluminescence (EL) images by employing a deep learning framework that utilizes both traditional Convoluti...
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Main Authors: | Almashhadani R.A.I., Hock G.C., Nordin F.H.B., Abdulrazzak H.N. |
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Other Authors: | 57223341022 |
Format: | Article |
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Seventh Sense Research Group
2025
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