Induction motors broken rotor bars detection using MCSA and neural network: experimental research

Springer Science and Business Media LLC - Tập 4 Số 2 - Trang 173-181 - 2013
S. Guedidi1, S. E. Zouzou2, Widad Laala2, K. Yahia2, Mohamed Sahraoui2
1Universite de Biskra
2Laboratoire de Génie Electrique (LGEB), Département de Génie Electrique, Université de Biskra, Biskra, Algeria

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