Authors

Lijun Hou, Xuemei Zheng, Chao Wang, Yangman Li, Haoyu Li

Abstract

In order to simplify the model of Direct-drive Permanent Magnet Synchronous Generator (D-PMSG) wind power system and improve the robustness, the variable Speed Constant Frequency (VSCF) D-PMSG wind power system is studied from the perspective of energy and robustness. Firstly, the Port Control Dissipative Hamiltonian (PCHD) model is established for D-PMSG, which simplifies the design of controller. Then, a global High-order Non-singular Terminal Sliding Mode (HNTSM) controller is designed to realize the Maximum Power Point Tracking (MPPT) below the rated wind speed, and it has much faster response speed and better robustness compared with PI controller. However, in the parameters design of PCHD controller, there is no specific selection criterion, so it is difficult for the parameters selected by experience to achieve the ideal effect. Therefore, the hybrid particle swarm optimization algorithm (HPSO) is used to optimize the parameters of PCHD controller, so that the control effect is faster and more accurate. Simulations validate the proposed control.

Citation

  • Journal: 2018 International Power Electronics Conference (IPEC-Niigata 2018 -ECCE Asia)
  • Year: 2018
  • Volume:
  • Issue:
  • Pages: 2901–2906
  • Publisher: IEEE
  • DOI: 10.23919/ipec.2018.8507616

BibTeX

@inproceedings{Hou_2018,
  title={{Based on PCHD and HPSO sliding mode control of D-PMSG wind power system}},
  DOI={10.23919/ipec.2018.8507616},
  booktitle={{2018 International Power Electronics Conference (IPEC-Niigata 2018 -ECCE Asia)}},
  publisher={IEEE},
  author={Hou, Lijun and Zheng, Xuemei and Wang, Chao and Li, Yangman and Li, Haoyu},
  year={2018},
  pages={2901--2906}
}

Download the bib file

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