4.7 Article

Adaptive Control of a Wind Turbine With Data Mining and Swarm Intelligence

Journal

IEEE TRANSACTIONS ON SUSTAINABLE ENERGY
Volume 2, Issue 1, Pages 28-36

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSTE.2010.2072967

Keywords

Adaptive control; blade pitch angle; data mining; electricity demand simulation; generator torque; neural networks; optimization; particle swarm fuzzy algorithm; power prediction

Funding

  1. Iowa Energy Center [07-01]

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The framework of adaptive control applied to a wind turbine is presented. The wind turbine is adaptively controlled to achieve a balance between two objectives, power maximization and minimization of the generator torque ramp rate. An optimization model is developed and solved with a linear weighted objective. The objective weights are autonomously adjusted based on the demand data and the predicted power production. Two simulation models are established to generate demand information. The wind power is predicted by a data-driven time-series model utilizing historical wind speed and generated power data. The power generated from the wind turbine is estimated by another model. Due to the intrinsic properties of the data-driven model and changing weights of the objective function, a particle swarm fuzzy algorithm is used to solve it.

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