Detection and Segmentation of Damaged Photovoltaic Panels Using Deep Learning and Fine-tuning in Images Captured by Drone

Luís Fabrício de Freitas Souza orcid, Tassiana Marinho de Castro orcid, Lucas de Oliveira Santos orcid, Adriell Gomes Marques orcid, José Jerovane da Costa Nascimento orcid, Matheus Araújo dos Santos orcid, Guilherme F. Brilhante Severiano orcid, & Pedro Pedrosa Rebouças Filho orcid

Abstract: Energy consumption is a direct impact factor in various sectors of society. Different technologies for energy generation are based on renewable sources and used as alternatives to the consumption of finite resources. Among these technologies, photovoltaic panels represent an efficient solution for energy generation and an option for sustainable consumption. The problem of damaged panels brings numerous problems in energy generation, from the interruption of generation to losses through financial investments. The proposed study presents an efficient model based on deep learning for detection and different models based on fine-tuning for the segmentation of damaged photovoltaic panels. The use of the Detectron2 convolutional network obtained 78% of Accuracy for detection and 95% precision in the detectable panels, also obtaining 99.91% for the segmentation problem of photovoltaic panels in the best-generated model in this study. The proposed model showed great effectiveness for panel detection and segmentation, surpassing works found in the literature.

Keywords: Photovoltaic Panels, Deep Learning for Detection, Panel Segmentation, Detectron2.

DOI code: 10.21528/lnlm-vol19-no2-art1

PDF file: vol19-no2-art1.pdf

BibTex file: vol19-no2-art1.bib