Insulator Defect Detection in Power Lines Based on Improved Convolution Neural Network

In a transmission line architecture, an insulator is essential for preventing the unintended dissipation of electrical current from the conductive elements into the surrounding environment. This purpose is accomplished by effectively isolating the conductors from the supporting framework. A def...

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Bibliographic Details
Main Authors: Annie, Joseph, Mohd Rahul, Mohd Rafiq, Kuryati, Kipli, Kho, Lee Chin, Tengku Mohd Afendi, Zulcaffle, Charlie Sia, Chin Voon
Format: Proceeding
Language:English
Published: 2023
Subjects:
Online Access:http://ir.unimas.my/id/eprint/43848/3/CENCON2023%20PROGRAM-BOOK.pdf
http://ir.unimas.my/id/eprint/43848/
https://attend.ieee.org/cencon-2023/
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Summary:In a transmission line architecture, an insulator is essential for preventing the unintended dissipation of electrical current from the conductive elements into the surrounding environment. This purpose is accomplished by effectively isolating the conductors from the supporting framework. A defect in the insulator may cause several malfunctions in the transmission line. It can range from a minor failure to catastrophic damage. Previous studies have investigated some insulator defect detection technologies using image processing methods. In modern research, classifiers are frequently used for this function in widespread detection systems. However, there are still some issues with computational effectiveness and detecting accuracy. This paper introduces an innovative approach by proposing a hybrid system based on You Only Look Once (YOLOv5) and Residual Neural Network (Resnet50) architectures. The proposed methodology achieves an excellent accuracy of 99.0 ± 0.233%. It takes 25 minutes to complete the training process for a dataset containing 1,000 photos of insulators. The suggested method can transform the inspection procedure for high-altitude insulators by smoothly merging the advantages of YOLOv5 and Resnet50 through a carefully thought-out hybrid approach.