Résumé:
This PhD thesis addresses the challenges posed by the instantaneous fluctuations in wind and
the non-linearity of wind turbines, which hinder the full exploitation of wind power with high
efficiency and reliability. The primary objective of this research is to propose innovative control
strategies for Wind Energy Conversion Systems (WECS) that balance the maximization of energy
efficiency with the minimization of mechanical stress through the reduction of electromagnetic torque
ripple. These strategies are grounded in the principle of frequency separation, which distinguishes
between the short-term and long-term variations in wind dynamics. This separation enables the
development of a dual-loop control architecture, optimizing both the high-frequency and lowfrequency dynamics inherent in the system. In the high-frequency loop, various controllers, including
Linear Quadratic Regulator (LQR) and H∞ controllers, are implemented to manage the dynamics
induced by turbulent wind speed. In the low-frequency loop, fractional-order proportional-integral
(FOPI) controllers are employed, with an advanced approach incorporating a filtered fractional-order
proportional-integral (FOPIF) controller optimized using the Particle Swarm Optimization (PSO)
algorithm. These controllers aim to mitigate electromagnetic torque ripple, also known as the
chattering problem, and ensure efficient Maximum Power Point Tracking (MPPT), thereby enhancing
system performance under variable wind conditions. The proposed control strategies not only
maximize the energy production of wind turbines but also reduce electromagnetic torque ripple,
thereby minimizing mechanical stress, extending the operational lifespan, and lowering maintenance
costs. By improving the dynamic behavior and reliability of the WECS, this research contributes
significantly to advancing control technologies in wind energy systems, promoting the growth of
efficient, scalable, and resilient renewable energy solutions. The findings of this work support the
global transition toward sustainable energy, offering valuable insights into optimizing wind energy
systems under challenging environmental conditions.