Title :
Faults diagnosis of induction machine by using feed-forward neural networks and genetic algorithms
Author :
Hasni, M. ; Hamdani, S. ; Taibi, Z.M. ; Touhami, O. ; Ibtiouen, Rachid ; Rezzoug, Abderrezak
Author_Institution :
LSEI - Univ. des Sci. et de, El-Alia, Algeria
Abstract :
We present the results of our investigation in the use of the multilayer feed-forward artificial neural networks (ANNs) and genetic algorithms (GAs) for fault diagnosis of induction machine. ANNs are used effectively to determine the classification of the faults of induction machine tested at different loads and at different frequencies. The novelty in this work is that proposed methodology is tested experimentally on four 4kW/1500rpm induction machines, with three current source frequencies (25,40,50)Hz on six different loads. The obtained results provide a satisfactory level of accuracy.
Keywords :
asynchronous machines; fault diagnosis; genetic algorithms; multilayer perceptrons; power engineering computing; power system reliability; ANN; GA; fault diagnosis; frequency 25 Hz; frequency 40 Hz; frequency 50 Hz; genetic algorithms; induction machine; multilayer feedforward artificial neural networks; power 4 kW; source frequency; Accuracy; Artificial neural networks; Genetic algorithms; Induction machines; Inverters; Training; Vectors; ANNS; Faults diagnosis; GAs; Induction machine;
Conference_Titel :
Control Conference (ASCC), 2013 9th Asian
Conference_Location :
Istanbul
Print_ISBN :
978-1-4673-5767-8
DOI :
10.1109/ASCC.2013.6606224