Model-free three-vector predictive current control of permanent magnet synchronous motor based on improved sliding mode observer

Author:

Huang Nan,Zhang Yufeng,Tian Beibei

Abstract

Abstract To address the complexity of vector selection in the conventional predictive current control strategy and the reduction of control system robustness when the motor parameters change, this paper proposes a finite-set model-free three-vector predictive current control method for permanent magnet synchronous motor based on the improved sliding-mode perturbation observer. According to the mathematical model of a permanent magnet synchronous motor under perturbation, a new hyperlocal model is established, and the conventional vector traversal optimization method is optimized to obtain the necessary basic voltage vector by analyzing the function with one judgment. Meanwhile, the sliding mode perturbation observer is designed using the fast exponential convergence law to observe the unknown part. Finally, by experimentally contrasting the proposed technique with the conventional three-vector model predictive current control, the method suggested in this paper can successfully reduce the current pulsation and inhibit the system perturbation caused by the parameter change, ensuring the steady state performance of the motor, as demonstrated by the experimental comparison with the conventional three-vector model predictive current control method.

Publisher

IOP Publishing

Reference5 articles.

1. Sensorless control of permanent magnet synchronous motor based on adaptive back-EMF observer [J];Xiangang;Advances in Mechanical Engineering,2023

2. A Model-Free Higher Order Sliding Mode control algorithm for permanent magnet synchronous motor [J];Kaihui;Transactions of China Electrotechnical Society,2023

3. A Robust Model-Free Fault-Tolerant Predictive Control for PMSM Drive System [J];Jundong;IEEE Access,2024

4. An Improved Model−Free Current Predictive Control of Permanent Magnet Synchronous Motor Based on High−Gain Disturbance Observer [J];Yufeng;Energies,2022

5. Performance Improvement of Model-Predictive Current Control of Permanent Magnet Synchronous Motor Drives [J];Zhang;IEEE Transactions on Industry Applications,2017

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