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PARAMETER ESTIMATION METHODOLOGY FOR NONLINEAR SYSTEMS:APPLICATION TO INDUCTION MOTOR

PARAMETER ESTIMATION METHODOLOGY FOR NONLINEAR SYSTEMS:APPLICATION TO INDUCTION MOTOR
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摘要 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. 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.
出处 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2005年第2期240-254,共15页 系统科学与系统工程学报(英文版)
关键词 Time-varying parameter estimation/identification sliding mode observer equivalent dynamic real-time implementation induction motor Time-varying parameter, estimation/identification, sliding mode observer, equivalent dynamic, real-time implementation, induction motor
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参考文献15

  • 1[1]Akatsu, K., and A., Kawamura, "Online rotor resistance estimation using transient state under the speed sensorless control of induction motor", IEEE Trans. On Power Electronics, Vol. 15, No. 3, pp553-560,2000.
  • 2[2]Floret, F., and F., Lamnabhi-Lagarrigue,"Parametric identification for nonlinear uncertain systems partially measurable",Proc. of the 5th IFAC Symposium on Nonlinear Control Systems - NOLCOS-01,Saint-Petersbourg, Russia, 2001.
  • 3[3]Floret, F., "Methodes d'identification pour des systemes non lineaires en temps continu", These de Doctorat de l'Universite Paris Ⅺ, Orsay-L2S-SUPELEC-CNRS,France, Nov. 2002.
  • 4[4]Kenne, G., "Methodes d'identification pour des systemes non lineaires avec parametres variant dans le temps: Application aux machines tournantes a induction", These de Doctorat de l 'Universite Paris Ⅺ,Orsay-L2S-SUPELEC-CNRS, France, Nov.2003.
  • 5[5]Landau, I.D., Identification des systemes,Hermes, collection pedagogique d'automatique, 1998.
  • 6[6]Landau, I.D., B.D.O., Anderson, and F.,Debruyne, "Algorithms for identification of continuous time nonlinear systems: a passivity approach", Nonlinear control in the year 2000, Ed. by A. Isidori, F.Lamnabhi-Lagarrigue and W. Respondek,Springer Verlag, Paris, Vol. 2, pp13-44,2000.
  • 7[7]Lecourtier, Y., F. Lamnabhi-Lagarrigue, and E. Walter, Volterra and generating power series approaches to identifiability testing,Ed. by. E. Walter, Pergamon Press, pp50-66,1987.
  • 8[8]Marino, R., S., Peresada, and P., Tomei,"On-line stator and rotor resistance estimation for induction motors", IEEE Trans. On Control Systems Technology, Vol.8, No. 3, pp570-579, 2000.
  • 9[9]Pavlov, A.V., and A.T., Zaremba,"Real-time rotor and stator resistances estimation of an induction motor", Proc. of the 5th IFAC Symposium on Nonlinear Control Systems, Saint-Petersbourg, 2001.
  • 10[10]Slotine, J.J.E., and W., Li, Applied Nonlinear Control, Prentice-Hall,International Editions, Englewood Cliffs,1991.

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