A Method for Parameters Estimation in Induction Motor Drives

نویسندگان

  • VASILE HORGA
  • ALEXANDRU ONEA
  • MIRCEA DIACONESCU
چکیده

The paper presents an estimation method for the electromagnetic and mechanical parameters of squirrel cage induction motor. The main result consists in the use of an improved dynamic model that allows also the estimation of the iron loss. The estimated parameters are obtained with accuracy higher than the one from the classical tests. The parameters can be used in the implementation of control algorithms, observers and/or parameter dependent adaptive schemes. Key-Words: induction motor, off-line estimation, field oriented control, static optimisation, DSP, data acquisition.

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تاریخ انتشار 2002