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Original Articles

High-order sliding mode observers and integral backstepping sensorless control of IPMS motor

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Pages 2176-2193 | Received 06 Dec 2012, Accepted 11 Mar 2014, Published online: 17 Apr 2014
 

Abstract

This paper presents a robust high-order sliding mode interconnected observer and an integral backstepping controller for a sensorless interior permanent magnet synchronous motor. To limit the chattering phenomenon on the observed state, a super twisting algorithm is combined with an interconnected observer to design a new high-order sliding mode observer which will be used for multiple-input multiple-output systems. The proposed observer is used to estimate in finite time the rotor position, the speed and the stator resistance. Moreover, a robust nonlinear controller based on the backstepping algorithm is designed where integral actions are introduced step by step. This controller allows to track a desired reference which is computed by using a maximum-torque-per-ampere strategy. Simulation results are shown to illustrate the performance of the proposed scheme by using significant trajectories including the zero speed and under parametric uncertainties.

Acknowledgement

This research was partially supported by the ANR CHASLIM 2011 BS03 007 01.

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