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Nonlinear Active Disturbance Rejection Control Strategy for Permanent Magnet Synchronous Motor Drives

Lianghong Zhu, Guoqiang Zhang, Runze Jing, Guangdong Bi, Runhua Xiang, Gaolin Wang, Dianguo Xu

2022IEEE Transactions on Energy Conversion69 citationsDOI

Abstract

Active disturbance rejection controller (ADRC) possesses the considerable capability of improving the robustness of the permanent magnet synchronous motor (PMSM) drives. Nevertheless, the traditional linear ADRC (LADRC) and nonlinear ADRC (NLADRC) have their specific characteristic disturbance range of application. To further expand the disturbance range so as to improve the robustness against the disturbances, a novel NLADRC is proposed, which replaces the traditional linear function with a nonlinear function (NLF). And it is applied as the speed regulator for PMSM drives. Considering the accuracy and the dynamic performance of the disturbance estimation at the same time, an NLF is developed, and its describing function is established accordingly. Based on the above analysis, the NLADRC employing a cascaded nonlinear extended state observer is constructed to guarantee the relatively rapid and accurate disturbances estimation and compensation. Then, via the describing function technique, the theoretical frequency-domain analysis for the stability, the disturbance estimation performance, and the stiffness of the proposed NLADRC-based sensorless PMSM drive is given. Finally, the validity of the proposed scheme is verified experimentally on a 2.2-kW PMSM drive platform.

Topics & Concepts

Control theory (sociology)Robustness (evolution)Active disturbance rejection controlNonlinear systemPermanent magnet synchronous motorControl engineeringRobust controlSynchronous motorComputer scienceDisturbance (geology)EngineeringState observerMagnetPhysicsControl (management)Quantum mechanicsMechanical engineeringGeneArtificial intelligenceBiochemistryElectrical engineeringChemistryBiologyPaleontologySensorless Control of Electric MotorsIterative Learning Control SystemsControl Systems in Engineering