ALVES, L. N. T.; http://lattes.cnpq.br/4161684266851941; ALVES, Lidja Nayara Tavares.
Resumo:
The Swedish Transmission Research Institute (STRI) guide classifies the surfaces of
insulators according to the contact angle and / or amount of wetted surface with water
subjectively (spray method). In this work a tool is proposed for the automatic monitoring
and classification of the hydrophobicity of polymeric insulators. Computational
algorithms for segmentation and classification of hydrophobic images using Digital
Image Processing (DIP), Probabilistic Density Function (PDF) and Artificial Neural
Network (ANN) were developed. Hydrophobicity was determined using parameters of
the hydrophobic images obtained by means of the spray method. The classification
parameters used were: quantity of wet regions; maximum individual area; total area of
wet regions; average and maximum distance between wet regions; greater form factor;
and minimum and maximum eccentricity. From the obtained results a mathematical
relationship between some parameters and the hydrophobicity was observed, being
possible to define the hydrophobicity with a minimum set of parameters. The analysis
and classification of hydrophobicity was performed using PDF and ANN. The
performance was evaluated in a dataset with more than 450 images and obtained an
accuracy rate of approximately 87% with ANN and of 80% by means of threshold
analysis from the PDF.