Implementation of Deep Learning Based on Convolutional Neural Network for Detecting Images of Solar Panel Damage in Smart Grid Systems
DOI:
https://doi.org/10.59934/jaiea.v5i3.2225Keywords:
CNN; Deep Learning; Grad-CAM; Solar Panels; Smart Grid.Abstract
This study aims to implement Deep Learning based on Convolutional Neural Network (CNN) in detecting solar panel damage using thermal images as part of a Smart Grid system. The main problem addressed is the difficulty of early automatic identification of solar panel cell damage using conventional methods. Through the CNN approach, this study developed a classification model to distinguish between damaged (Defective) and undamaged (Non-Defective) solar panel conditions. The research stages included thermal image dataset collection, pre-processing, model training, and performance evaluation. The results showed that the CNN model was able to achieve an accuracy of over 87% with stable performance on the validation data. Visualization using the Grad-CAM method helps interpret the damaged areas that are the focus of the model's decision.
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References
A. M. Alatwi, et al., “Deep Learning-Based Dust Detection on Solar Panels,” Sustainability, vol. 16, no. 19, 2024.
W. Hassan and M. Dhimish, “CNN-based fault detection for solar panels,” 2023.
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