NÓBREGA, S. C.; http://lattes.cnpq.br/3844317736320485; NÓBREGA, Samuel Cesarino da.
Resumo:
Electrical insulators play a significant role in the reliability of the power system.
In recent decades, glass and porcelain insulators have been replaced by polymeric
insulators. Although they have advantages over glass and porcelain insulators, polymeric
insulators are more susceptible to defects due to exposure to solar radiation and electrical
stress. Additionally, the diagnosis of polymeric insulators is more complex, as the
recurrent defects are quite small and more difficult to detect during the inspection process.
To make the inspection process faster, many researchers are proposing the use of
Computer Vision techniques to detect defects in glass and porcelain insulator strings from
aerial images. However, few works have used the same methodology for to inspect
polymeric insulators. Therefore, the present work aims to identify defects in polymeric
suspension insulators using Artificial Intelligence techniques applied to images. To this
end, datasets of polymeric insulator images at five different distances between the camera
and the insulator are constructed. Due to the need for a large amount of data to train
Computer Vision models, data augmentation techniques are used to obtain new samples
of images. Next, fine-tuning models of YOLOv8 detectors are trained to detect four types
of defects in insulators: exposed rod, end fitting corrosion, cracks, and damaged sheds.
Finally, the impact of the distance between the camera and the insulator, the input size of
the images, and the type of model used to detect defects is evaluated. The results showed
that YOLOv8 can detect defects in polymeric insulators with precision, sensitivity, and
AP above 90% from images captured within the safety distance between the camera and
the insulator, as long as the input size is high and there is a large amount of data for
training.