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Suitable features selection for monitoring thermal condition of electrical equipment using infrared thermography
Institution:1. Trauma Research Centre (TRUMS), Kashan University of Medical Sciences and Health Services, Kashan, Isfahan, Iran;2. Health Information Management Research Center, Kashan University of Medical Sciences and Health Services, Kashan, Isfahan, Iran;1. Laboratoire de Génie Industriel et Production Mécanique, Ecole Nationale des Sciences Appliquée d’Oujda, Université Mohamed Premier, B.P. 524, 6000 Oujda, Morocco;2. Laboratoire de Dynamique et d’Optique des Matériaux, Faculté des Sciences d’Oujda, Université Mohammed Premier Oujda, 60000, Morocco;3. Ecole Supérieure de Technologie d’Oujda, Université Mohammed Premier, B.P. 524, 6000 Oujda, Morocco;1. School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, 200240 Shanghai, PR China;2. State Grid Shandong Electric Power Company Jinan Power Supply Company, 250001 Shandong, PR China;3. Maintenance & Test Center of EHV power Transmission Company, China Southern Power Grid, 510000 Guangdong, PR China;1. Faculty of Electrical & Electronic Engineering, Universiti Malaysia Pahang, 26600 Pekan, Pahang, Malaysia;2. School of Electrical and Electronic Engineering, Universiti Sains Malaysia, Engineering Campus, 14300 Nibong Tebal, Penang, Malaysia;1. Ministry of Higher Education and Scientific Research – University of Wasit, Iraq;2. Wolfson Centre for Magnetics, Cardiff University, Cardiff CF24 3AA, UK;3. School of Engineering, Cardiff University, Queen’s Buildings, The Parade, Cardiff CF24 3AA, UK
Abstract:Monitoring the thermal condition of electrical equipment is necessary for maintaining the reliability of electrical system. The degradation of electrical equipment can cause excessive overheating, which can lead to the eventual failure of the equipment. Additionally, failure of equipment requires a lot of maintenance cost, manpower and can also be catastrophic- causing injuries or even deaths. Therefore, the recognition processof equipment conditions as normal and defective is an essential step towards maintaining reliability and stability of the system. The study introduces infrared thermography based condition monitoring of electrical equipment. Manual analysis of thermal image for detecting defects and classifying the status of equipment take a lot of time, efforts and can also lead to incorrect diagnosis results. An intelligent system that can separate the equipment automatically could help to overcome these problems. This paper discusses an intelligent classification system for the conditions of equipment using neural networks. Three sets of features namely first order histogram based statistical, grey level co-occurrence matrix and component based intensity features are extracted by image analysis, which are used as input data for the neural networks. The multilayered perceptron networks are trained using four different training algorithms namely Resilient back propagation, Bayesian Regulazation, Levenberg–Marquardt and Scale conjugate gradient. The experimental results show that the component based intensity features perform better compared to other two sets of features. Finally, after selecting the best features, multilayered perceptron network trained using Levenberg–Marquardt algorithm achieved the best results to classify the conditions of electrical equipment.
Keywords:Condition monitoring  Electrical equipment  Infrared thermography  Features  Multilayered perceptron network
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