Low-Stagnation Model-Free Predictive Current Control of PMSM Drives

Wang; F.; Wei; Y.; Young; H.; Ke; D.; Yu; X.; Rodríguez; J.

Keywords: frequency, converting double second, order generalized integrator (FC, DSOGI); generalized universal model (GUM); low, stagnation model, free predictive control (MFPC); sample data; stagnation effect

Abstract

As the updating frequency decreases, the stagnation effect poses a challenge to the accuracy of model-free predictive control (MFPC) based on signal gradients. To mitigate this issue from the perspective of sampled data, a low-stagnation model-free predictive current control (MF-PCC) strategy is proposed in this article and applied in permanent magnet synchronous motor (PMSM) drives. Recognizing that some elements of the sampled data do not contribute to accurately depict the motion characteristics and operational states of the system, a frequency-converting double second-order generalized integrator (FC-DSOGI) structure is improved and utilized to extract these elements and reinject them by a random gain, thereby generating a coercive difference to reduce the stagnation effect. Furthermore, fuzzy logic is developed to determine the optimal gains for the control law, thereby enhancing the control performance. The generalized universal model (GUM) is chosen as an illustrative case. Through experimental validation, the effectiveness of the proposed method is demonstrated with enhancements in current quality and model accuracy, alongside enhanced robustness. Moreover, it showcases the superiority of the low-stagnation over conventional control strategies. © 1982-2012 IEEE.

Más información

Título según WOS: Low-Stagnation Model-Free Predictive Current Control of PMSM Drives
Título según SCOPUS: Low-Stagnation Model-Free Predictive Current Control of PMSM Drives
Título de la Revista: IEEE Transactions on Industrial Electronics
Volumen: 72
Número: 7
Editorial: Institute of Electrical and Electronics Engineers Inc.
Fecha de publicación: 2025
Página de inicio: 6719
Página final: 6730
Idioma: English
DOI:

10.1109/TIE.2024.3508070

Notas: ISI, SCOPUS