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PARAMETER ESTIMATION METHODOLOGY FOR NONLINEAR SYSTEMS: APPLICATION TO INDUCTION MOTOR
作者姓名:G.KENNE  F.FLORET  H.NKWAWO  F.LAMNABHI-LAGARRIGUE
作者单位:1. Département de Genie Electrique, IUT-FV Bandjoun, Université de Dschang B.P. 134 Bandjoun, Cameroun
2. L2TI, Université Paris ⅩⅢ, 99 Avenue Jean Baptiste Clément 93430 Villetaneuse, France
3. Département GEII, Université Paris ⅩⅢ, 99 Avenue Jean Baptiste Clément 93430 Villetaneuse, France
4. L2S, CNRS-SUPELEC, Université Paris Ⅺ, 3 Rue Joliot Curie 91192 Gif-sur- Yvette, France
摘    要:1. Introduction In recent years, there has been a lot of research concerning parameter estimation (Akatsu and Kawamura 2000, LandauAnderson and De Bruyne 2000, Marino Peresada and Tomei 2000, Floret and Lamnabhi-Lagarrigue 2001, Pavlov and Zaremba 2001, Floret 2002, Kenné 2003). In linear systems and in some specific nonlinear cases, parameter estimation is performed using the least square algorithm (Walter and Pronzato 1994, Landau 1998). The application of this technique in the case…

关 键 词:参数估计  方法论  非线性系统  感应电机

Parameter estimation methodology for nonlinear systems: Application to induction motor
G.KENNE,F.FLORET,H.NKWAWO,F.LAMNABHI-LAGARRIGUE.Parameter estimation methodology for nonlinear systems: Application to induction motor[J].Journal of Systems Science and Systems Engineering,2005,14(2):240-254.
Authors:G Kenne  F Floret  H Nkwawo  F Lamnabhi-Lagarrigue
Institution:(1) Département de Genie Electrique, IUT-FV Bandjoun, Université de Dschang, B.P. 134, Bandjoun, Cameroun;(2) L2TI, Université Paris XIII, 99 Avenue Jean Baptiste Clément, 93430 Villetaneuse, France;(3) Département GEII, Université Paris XIII, 99 Avenue Jean Baptiste Clément, 93430 Villetaneuse, France;(4) L2S, CNRS-SUPELEC, Université Paris XI, 3 Rue Joliot Curie, 91192 Gif-sur-Yvette, France
Abstract:This paper deals with on-line state and parameter estimation of a reasonably large class of nonlinear continuous-time systems using a step-by-step sliding mode observer approach. The method proposed can also be used for adaptation to parameters that vary with time. The other interesting feature of the method is that it is easily implementable in real-time. The efficiency of this technique is demonstrated via the on-line estimation of the electrical parameters and rotor flux of an induction motor. This application is based on the standard model of the induction motor expressed in rotor coordinates with the stator current and voltage as well as the rotor speed assumed to be measurable. Real-time implementation results are then reported and the ability of the algorithm to rapidly estimate the motor parameters is demonstrated. These results show the robustness of this approach with respect to measurement noise, discretization effects, parameter uncertainties and modeling inaccuracies. Comparisons between the results obtained and those of the classical recursive least square algorithm are also presented. The real-time implementation results show that the proposed algorithm gives better performance than the recursive least square method in terms of the convergence rate and the robustness with respect to measurement noise.
Keywords:Time-varying parameter  estimation/identification  sliding mode observer  equivalent dynamic  real-time implementation  induction motor
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