Three Dimensional Dynamic Model Based Wind Field Reconstruction from Lidar Data

Using the inflowing horizontal and vertical wind shears for individual pitch controller is a promising method if blade bending measurements are not available. Due to the limited information provided by a lidar system the reconstruction of shears in real-time is a challenging task especially for the...

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Veröffentlicht in:Journal of physics. Conference series 2014-06, Vol.524 (1), p.12005-10
Hauptverfasser: Raach, Steffen, Schlipf, David, Haizmann, Florian, Cheng, Po Wen
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Schlipf, David
Haizmann, Florian
Cheng, Po Wen
description Using the inflowing horizontal and vertical wind shears for individual pitch controller is a promising method if blade bending measurements are not available. Due to the limited information provided by a lidar system the reconstruction of shears in real-time is a challenging task especially for the horizontal shear in the presence of changing wind direction. The internal model principle has shown to be a promising approach to estimate the shears and directions in 10 minutes averages with real measurement data. The static model based wind vector field reconstruction is extended in this work taking into account a dynamic reconstruction model based on Taylor's Frozen Turbulence Hypothesis. The presented method provides time series over several seconds of the wind speed, shears and direction, which can be directly used in advanced optimal preview control. Therefore, this work is an important step towards the application of preview individual blade pitch control under realistic wind conditions. The method is tested using a turbulent wind field and a detailed lidar simulator. For the simulation, the turbulent wind field structure is flowing towards the lidar system and is continuously misaligned with respect to the horizontal axis of the wind turbine. Taylor's Frozen Turbulence Hypothesis is taken into account to model the wind evolution. For the reconstruction, the structure is discretized into several stages where each stage is reduced to an effective wind speed, superposed with a linear horizontal and vertical wind shear. Previous lidar measurements are shifted using again Taylor's Hypothesis. The wind field reconstruction problem is then formulated as a nonlinear optimization problem, which minimizes the residual between the assumed wind model and the lidar measurements to obtain the misalignment angle and the effective wind speed and the wind shears for each stage. This method shows good results in reconstructing the wind characteristics of a three dimensional turbulent wind field in real-time, scanned by a lidar system with an optimized trajectory.
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subjects Dynamic models
Fields (mathematics)
Frozen
Horizontal
Hypotheses
Internal model principle
Lidar
Misalignment
Physics
Pitch (inclination)
Preview control
Real time
Reconstruction
Shears
Static models
Three dimensional models
Trajectory optimization
Turbulence
Turbulent flow
Turbulent wind
Wind direction
Wind shear
Wind speed
Wind turbines
title Three Dimensional Dynamic Model Based Wind Field Reconstruction from Lidar Data
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