Title :
Unbalanced Transients-Based Maximum Likelihood Identification of Induction Machine Parameters
Author :
Wamkeue, R. ; Kamawa, I. ; Chacha, M.
Author_Institution :
University of Quebec (UQAT); Hydro-Quebec/IREQ; Ryerson Polytechnic University
Abstract :
This paper describes an effective formulation of a maximum-likelihood identification algorithm for linear estimation of the equivalent-circuit parameters of cage-type (single-cage and double-cage) or deep-bar induction motors with measurement and process noises. A complete generalized model for symmetrical and asymmetrical test analysis of induction machines is developed for this purpose. The paper outlines the theory and reasoning behind the proposed statistical-based treatment of online data derived from a generalized least-squares estimator and a Kalman filter. The method is successfully applied to online double-line independent finite-element short-circuit simulated records of a deep-bar type induction motor.
Keywords :
Brushless DC motors; Commutation; Finite element methods; Induction machines; Induction motors; Maximum likelihood estimation; Rotors; Saturation magnetization; Synchronous machines; Testing; Induction machines; finite-element simulation; identification; modeling;
Journal_Title :
Power Engineering Review, IEEE
DOI :
10.1109/MPER.2002.4311890