Abstract

This study investigates how short-term lidar measurements can be used in combination with a mast measurement to improve vertical extrapolation of wind speed. Several methods are developed and analyzed for their performance in estimating the mean wind speed, the wind speed distribution, and the energy yield of an idealized wind turbine at the target height of the extrapolation. These methods range from directly using the wind shear of the short-term measurement to a classification approach based on commonly available environmental parameters using linear regression. The extrapolation strategies are assessed using data of ten wind profiles up to 200 m measured at different sites in Germany. Different mast heights and extrapolation distances are investigated. The results show that, using an appropriate extrapolation strategy, even a very short-term lidar measurement can significantly reduce the uncertainty in the vertical extrapolation of wind speed. This observation was made for short as well as for very large extrapolation distances. Among the investigated methods, the linear regression approach yielded better results than the other methods. Integrating environmental variables into the extrapolation procedure further increased the performance of the linear regression approach. Overall, the extrapolation error in (theoretical) energy yield was decreased by around 50% to 70% on average for a lidar measurement of approximately one to two months depending on the extrapolation height and distance. The analysis of seasonal patterns revealed that appropriate extrapolation strategies can also significantly reduce the seasonal bias that is connected to the season during which the short-term measurement is performed.

Highlights

  • Wind turbine heights have increased significantly throughout the last years

  • This study investigates how short-term lidar measurements can be used in combination with a mast measurement to improve vertical extrapolation of wind speed

  • Several methods are developed and analyzed for their performance in estimating the mean wind speed, the wind speed distribution, and the energy yield of an idealized wind turbine at the target height of the extrapolation. These methods range from directly using the wind shear of the short-term measurement to a classification approach based on commonly available environmental parameters using linear regression

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Summary

Introduction

Average hub heights of onshore turbines in Germany have grown from 101 m to 141 m in the period between 2010 and 2018; tip heights of the turbine blades well exceed 200 m and the trend to larger turbines is expected to continue [1] This poses a challenge to resource assessment in wind energy projects as wind data at great heights need to be assessed. The power law [6] is often used to extrapolate measured wind profiles to greater heights. Α combines all physical processes influencing the wind profile and can be derived from measurements at two heights. In contrast to physical models, the power law can be adapted to the conditions on site by fitting it to the measured wind profile.

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