6533b85efe1ef96bd12bf399

RESEARCH PRODUCT

Speed and rotor flux estimation of induction motors via on-line adjusted extended kalman filter

Giuseppe GiardinaT. CangemiFrancesco AlongeFilippo D'ippolito

subject

EngineeringDiscretizationStatorbusiness.industryCovariance matrixCovariance matrixKalman filterSensorless controlInvariant extended Kalman filterlaw.inventionExtended Kalman filterExtended Kalman filterNoiseSettore ING-INF/04 - AutomaticalawControl theoryInduction motorbusinessEstimationInduction motor

description

This paper deals with the estimation of speed and rotor flux of induction motors via Extended Kalman Filter (EKF) with on-line adjusting of the system noise covariance matrix. The predictor of EKF consists of a discrete time model obtained by means of a second order discretization of the original nonlinear model of the induction motor. In order to obtain accurate estimation of the above mentioned variables, the load torque is included in the state variables and then estimated. Three different system noise models are also illustrated and compared each other by simulations carried out in Matlab/Simulink environment. For one of these models, EKF is adjusted on-line by means of an additional PID-type control loop driven by the stator current error which gives updates of the system noise covariance matrix.

10.1109/iecon.2006.348088http://hdl.handle.net/10447/23345