Robust active wake control in consideration of wind direction variability and uncertainty
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Published:2018-11-12
Issue:2
Volume:3
Page:869-882
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ISSN:2366-7451
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Container-title:Wind Energy Science
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language:en
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Short-container-title:Wind Energ. Sci.
Author:
Rott AndreasORCID, Doekemeijer BartORCID, Seifert Janna Kristina, van Wingerden Jan-WillemORCID, Kühn MartinORCID
Abstract
Abstract. The prospects of active wake deflection control to mitigate wake-induced
power losses in wind farms have been demonstrated by large eddy simulations,
wind tunnel experiments, and recent field tests. However, it has not yet been
fully understood how the yaw control of wind farms should take into account
the variability in current environmental conditions in the field and the
uncertainty in their measurements. This research investigated the influence
of dynamic wind direction changes on active wake deflection by intended yaw
misalignment. For this purpose the wake model FLORIS was used together with
wind direction measurements recorded at an onshore meteorological
mast in flat terrain. The analysis showed that active wake deflection has
a high sensitivity towards short-term wind directional changes. This can lead
to an increased yaw activity of the turbines. Fluctuations and uncertainties
can cause the attempt to increase the power output to fail. Therefore a
methodology to optimize the yaw control algorithm for active wake deflection
was introduced, which considers dynamic wind direction changes and
inaccuracies in the determination of the wind direction. The evaluation based
on real wind direction time series confirmed that the robust control
algorithm can be tailored to specific meteorological and wind farm conditions
and that it can indeed achieve an overall power increase in realistic inflow
conditions. Furthermore recommendations for the implementation are given
which could combine the robust behaviour with reduced yaw activity.
Publisher
Copernicus GmbH
Subject
Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment
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