Energies (Nov 2021)

Multi-Virtual-Vector Model Predictive Current Control for Dual Three-Phase PMSM

  • Tianjiao Luan,
  • Zhichao Wang,
  • Yang Long,
  • Zhen Zhang,
  • Qi Li,
  • Zhihao Zhu,
  • Chunhua Liu

DOI
https://doi.org/10.3390/en14217292
Journal volume & issue
Vol. 14, no. 21
p. 7292

Abstract

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This paper proposes a multi-virtual-vector model predictive control (MPC) for a dual three-phase permanent magnet synchronous machine (DTP-PMSM), which aims to regulate the currents in both fundamental and harmonic subspace. Apart from the fundamental α-β subspace, the harmonic subspace termed x-y is decoupled in multiphase PMSM according to vector space decomposition (VSD). Hence, the regulation of x-y currents is of paramount importance to improve control performance. In order to take into account both fundamental and harmonic subspaces, this paper presents a multi-virtual-vector model predictive control (MVV-MPC) scheme to significantly improve the steady performance without affecting the dynamic response. In this way, virtual vectors are pre-synthesized to eliminate the components in the x-y subspace and then a vector with adjustable phase and amplitude is composed of two effective virtual vectors and a zero vector. As a result, an enhanced current tracking ability is acquired due to the expanded output range of the voltage vector. Lastly, both simulation and experimental results are given to confirm the feasibility of the proposed MVV-MPC for DTP-PMSM.

Keywords