Title :
Intelligent detection of electrical equipment faults in the overhead substations based machine vision
Author :
Rahmani, Abolfazl ; Haddadnia, Javad ; Sanai, Alireza ; Seryasat, Omid
Author_Institution :
Eng. Dept., Sabzevar Tarbiat Moallem Univ., Sabzevar, Iran
Abstract :
This paper introduces a method for the intelligent detection of electrical equipment faults with thermo vision technology, multi-class support vector machine (MSVM) as a classifier and Pseudo Zernike moment as image feature. The aim of this paper is to detect the electrical equipment faults by making use of the moment method and statistical features of thermo images. The classifier effectiveness and accurateness depends on the moment order that was used. By attention to the commonly occurring faults in the substations of distribution networks, four major faults occurring in overhead substations have been chosen. Simulation results are carried out on practical databases of real images of the distribution networks of North West of Tehran.
Keywords :
computer vision; distribution networks; electrical faults; fault diagnosis; method of moments; power apparatus; power engineering computing; statistical analysis; substations; support vector machines; distribution networks; electrical equipment fault intelligent detectioin; machine vision; multiclass support vector machine; overhead substations; pseudozernike moment method; statistical features; thermovision technology; Monitoring; Pattern recognition; Support vector machines; Feature Extraction; Intelligent fault detection; Multi-Class Support Vector Machine; Pseudo Zernike Moment; Thermo vision;
Conference_Titel :
Mechanical and Electronics Engineering (ICMEE), 2010 2nd International Conference on
Conference_Location :
Kyoto
Print_ISBN :
978-1-4244-7479-0
Electronic_ISBN :
978-1-4244-7481-3
DOI :
10.1109/ICMEE.2010.5558471