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Journal article

LQG control for hydrodynamic compensation on large floating wind turbines

From

Loughborough University1

Wind Turbine Design Division, Department of Wind and Energy Systems, Technical University of Denmark2

Response, Aeroelasticity, Control and Hydrodynamics, Wind Turbine Design Division, Department of Wind and Energy Systems, Technical University of Denmark3

Department of Wind and Energy Systems, Technical University of Denmark4

This work proposes a novel Linear Quadratic Gaussian (LQG)-based blade pitch control method for floating offshore wind turbines, in which a state-space model of the turbine and water hydrodynamics is included in the LQG design. The actuation considered is collective blade pitch control with the objective of generator power stabilization and platform motion reduction.

A linear Kalman filter is used to estimate un-measurable states relating to wave excitation and radiation through measurements of generator speed, platform pitch, and wind disturbance. Controller design models were validated with the full order nonlinear model under various testing conditions. The new controller design is tested on a nonlinear high-fidelity simulation model of the 15 Mega-Watt (MW) floating semi-submersible wind turbine.

In simulations with realistic stochastic wind and wave disturbances, the new controller achieves 32% lower generator speed Root Mean Square Error (RMSE) and 16% lower platform pitch RMSE compared to a standard LQG controller that does not include hydrodynamic states, for equivalent levels of pitch actuation and with a 2∘/sec rate limit on pitch.

The inclusion of hydrodynamics in the controller design not only reduced platform pitching fluctuation, but also had a strong effect of hub-height factors such as the generator speed.

Language: English
Year: 2023
Pages: 1-9
ISSN: 18790682 and 09601481
Types: Journal article
DOI: 10.1016/j.renene.2023.01.067
ORCIDs: Kim, Taeseong , 0000-0003-4444-1652 , 0000-0001-9170-7690 and 0000-0003-2936-4644

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