FLUX-BASED FAULT DETECTION IN ROTORS OF INDUCTION MOTORS, USING FINITE ELEMENTS AND NEURAL NETWORK, 77-87.

Milad N. Azari, Hossein A. Khazaeli, and Mehdi Samami

References

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