Journal of Artificial Intelligence and Data Mining (Jul 2016)

An indirect adaptive neuro-fuzzy speed control of induction motors

  • M. Vahedi,
  • M. Hadad Zarif,
  • A. Akbarzadeh Kalat

DOI
https://doi.org/10.5829/idosi.JAIDM.2016.04.02.13
Journal volume & issue
Vol. 4, no. 2
pp. 243 – 251

Abstract

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This paper presents an indirect adaptive system based on neuro-fuzzy approximators for the speed control of induction motors. The uncertainty including parametric variations, the external load disturbance and unmodeled dynamics is estimated and compensated by designing neuro-fuzzy systems. The contribution of this paper is presenting a stability analysis for neuro-fuzzy speed control of induction motors. The online training of the neuro-fuzzy systems is based on the Lyapunov stability analysis and the reconstruction errors of the neuro-fuzzy systems are compensated in order to guarantee the asymptotic convergence of the speed tracking error. Moreover, to improve the control system performance and reduce the chattering, a PI structure is used to produce the input of the neuro-fuzzy systems. Finally, simulation results verify high performance characteristics and robustness of the proposed control system against plant parameter variation, external load and input voltage disturbance.

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