Energies (Jun 2022)

Normalized-Model Reference System for Parameter Estimation of Induction Motors

  • Adolfo Véliz-Tejo,
  • Juan Carlos Travieso-Torres,
  • Andrés A. Peters,
  • Andrés Mora,
  • Felipe Leiva-Silva

DOI
https://doi.org/10.3390/en15134542
Journal volume & issue
Vol. 15, no. 13
p. 4542

Abstract

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This manuscript proposes a short tuning march algorithm to estimate induction motors (IM) electrical and mechanical parameters. It has two main novel proposals. First, it starts by presenting a normalized-model reference adaptive system (N-MRAS) that extends a recently proposed normalized model reference adaptive controller for parameter estimation of higher-order nonlinear systems, adding filtering. Second, it proposes persistent exciting (PE) rules for the input amplitude. This N-MRAS normalizes the information vector and identification adaptive law gains for a more straightforward tuning method, avoiding trial and error. Later, two N-MRAS designs consider estimating IM electrical and mechanical parameters. Finally, the proposed algorithm considers starting with a V/f speed control strategy, applying a persistently exciting voltage and frequency, and applying the two designed N-MRAS. Test bench experiments validate the efficacy of the proposed algorithm for a 10 HP IM.

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