INVESTIGADORES
DE ANGELO Cristian Hernan
congresos y reuniones científicas
Título:
SVM - Based System For Broken Rotor Bar Detection In Induction Motors
Autor/es:
CARLOS M. PEZZANI; JUAN FONTANA; PABLO D. DONOLO; CRISTIAN H. DE ANGELO; GUILLERMO R. BOSSIO; LUIS I. SILVA
Lugar:
Cali
Reunión:
Congreso; 2018 IEEE ANDESCON; 2018
Resumen:
In this paper we propose a system for the detection of broken bars (BB) in induction motors (IM) based on a binary SVM classifier. Statistical features obtained from a IM current are used as inputs of the classifier. We train the classifier with simulation data, using a qd model of IM. Through simulation, 360 records of 120 cycles were generated in which different IM conditions were considered, healthy, rotor fault and disturbances in torque and voltage. Finally, the classifier was validated with experimental laboratory data, obtained from an IM of 5.5 kW in healthy, 2 and 3 BB, with different load and supply voltage conditions. The results show that the proposed classifier allows detection with 91.67% accuracy, and without false negatives (faulty IMs classified as heathy).