Litcius/Paper detail

Displacement Self-Sensing Control of Permanent Magnet Assisted Bearingless Synchronous Reluctance Motor Based on Least Square Support Vector Machine Optimized by Improved NSGA-II

Huangqiu Zhu, Yijian Shi

2023IEEE Transactions on Industrial Electronics14 citationsDOI

Abstract

In order to solve the problems of low integration, low reliability, and high cost caused by mechanical sensors used in bearingless synchronous reluctance motor (PMa-BSynRM) control system, a novel displacement self-sensing control method using a least square support vector machine (LSSVM) left inverse system is proposed. First, the working principle of the PMa-BSynRM is introduced and the mathematical model of the PMa-BSynRM is derived. Second, the observation principle of the left-inverse system of the PMa-BSynRM is explained and the left-invertibility of the displacement subsystem is proved. Thirdly, the improved NSGA-II algorithm is utilized to optimize the regularization parameter and the bandwidth of LSSVM, and the displacement self-sensing control system is constructed. The simulations of speed variation and anti-interference are performed, which proves the dynamic tracking performance of the displacement. Finally, the static suspension, speed variation and anti-interference experiments are carried out. The feasibility and reliability of the proposed displacement self-sensing method are verified.

Topics & Concepts

Control theory (sociology)Displacement (psychology)Inverse systemMagnetic reluctanceVector controlMachine controlSynchronous motorMagnetic bearingEngineeringComputer scienceInverseMagnetMathematicsControl engineeringInduction motorArtificial intelligenceVoltageControl (management)Mechanical engineeringGeometryPsychologyElectrical engineeringPsychotherapistMagnetic Bearings and Levitation DynamicsSensorless Control of Electric MotorsElectric Motor Design and Analysis