Hybrid Control using Adaptive Particle Swarm Optimization and Integral Backstepping Control of Grid-connected Doubly Fed Induction Generator

Authors

  • Elmostafa Chetouani Laboratory, Electronics, Instrumentation and Energy, Exploitation and Processing of Renewable Energy, Department of Physics, Faculty of Sciences, University of Chouaib Doukkali, El Jadida, Morocco
  • Youssef Errami Laboratory, Electronics, Instrumentation and Energy, Exploitation and Processing of Renewable Energy, Department of Physics, Faculty of Sciences, University of Chouaib Doukkali, El Jadida, Morocco
  • Abdellatif Obbadi Laboratory, Electronics, Instrumentation and Energy, Exploitation and Processing of Renewable Energy, Department of Physics, Faculty of Sciences, University of Chouaib Doukkali, El Jadida, Morocco
  • Smail Sahnoun Laboratory, Electronics, Instrumentation and Energy, Exploitation and Processing of Renewable Energy, Department of Physics, Faculty of Sciences, University of Chouaib Doukkali, El Jadida, Morocco

DOI:

https://doi.org/10.48048/tis.2021.712

Keywords:

Doubly fed induction generator, Indirect vector control, Integral backstepping control, Particle swarm optimization, Proportional-integral controller, Wind energy system

Abstract

We proposed an analysis of a hybrid control of active and reactive power for a doubly-fed induction generator for variable velocity wind energy injection into the electrical grid using a combination of adaptive particle swarm optimization and integral backstepping control in this paper. The stability of the Lyapunov function is utilized to establish the latter. Six controllers are developed as part of the proposed control process: The first is concerned with the maximum PowerPoint. The stator powers are managed by the second and third regulators, which are performed by the optimal PI controller using adaptive particle swarm optimization. The DC link voltage is kept constant by the fourth controller. The fifth and sixth are employed to pilot the rotor powers and ensure that the power factor is maintained to 1. These three controllers are synthesized by using the nonlinear integral backstepping control. These control strategies show excellent results compared to field-oriented control under a variable wind speed profile and changing generator settings in a Matlab/Simulink environment. According to the test findings, using integral backstepping, the overshoot of the DC-link voltage is decreased by 99.16 %. Furthermore, the particle swarm optimization reduces its time to reach the equilibrium state to 4.3 m s and demonstrates robustness against parameter generator changes.

HIGHLIGHTS

  • The regulation of the produced power by the wind energy conversion system (WECS) based on a doubly-fed induction generator is becoming increasingly important to researchers. This system is modeled and simulated in the Matlab/Simulink software environment to apply the proposed control
  • In order to extract the maximum power from the variable wind source, a maximum power point tracking method is developed based on the PI controller
  • For piloting the wind energy system conversion (WECS) based on a DFIG, a combination of the integrated Backstepping controller and adaptive PSO is proposed and realized in this paper
  • Robustness tests are established by adjusting the generator parameters, and a comparative study is conducted to verify the superiority of the suggested control over the indirect vector control

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Published

2021-11-15

How to Cite

Chetouani, E. ., Errami, Y. ., Obbadi, A. ., & Sahnoun, S. . (2021). Hybrid Control using Adaptive Particle Swarm Optimization and Integral Backstepping Control of Grid-connected Doubly Fed Induction Generator . Trends in Sciences, 18(23), 712. https://doi.org/10.48048/tis.2021.712