Litcius/Paper detail

Application of Deep-Learning via Transfer Learning to Evaluate Silicone Rubber Material Surface Erosion

Youssef El Haj, Ayman El‐Hag, Refat Atef Ghunem

2021IEEE Transactions on Dielectrics and Electrical Insulation30 citationsDOIOpen Access PDF

Abstract

In this letter a deep learning-based model is proposed for online inspection of silicone rubber outdoor insulators. The inclined plane tracking and erosion test is used as per ASTM D2303 in order to simulate standard erosion on silicone rubber insulation composites. Photos taken for the tested composites are used as training and testing inputs for a convolutional neural network topology in the proposed deep learning model, thereby classifying the degree of erosion damage into light, moderate and severe. The remarkable classification accuracy obtained shows the potential of utilizing the proposed framework for online monitoring of outdoor silicone rubber insulators in the transmission and distribution grid.

Topics & Concepts

Silicone rubberNatural rubberMaterials scienceComposite materialTransfer of learningConvolutional neural networkErosionComputer scienceDeep learningTracking (education)Artificial intelligenceGeologyPedagogyPaleontologyPsychologyInfrastructure Maintenance and MonitoringHigh voltage insulation and dielectric phenomenaNon-Destructive Testing Techniques