Wind farm yaw control set-point optimization under model parameter uncertainty
Michael F. Howland

TL;DR
This paper introduces a yaw set-point optimization method for wind farms that accounts for model parameter uncertainty and wind variability, improving robustness in control strategies based on numerical experiments and simulations.
Contribution
It develops a novel optimization approach incorporating model parameter uncertainty, enhancing the robustness of wake steering control under atmospheric variability.
Findings
Significant power increase at low turbulence for certain layouts.
Improved control robustness with higher yaw controller update frequency.
No significant power gains in highly turbulent conditions.
Abstract
Wake steering, the intentional yaw misalignment of certain turbines in an array, has demonstrated potential as a wind farm control approach to increase collective power. Existing algorithms optimize the yaw misalignment angle set-points using steady-state wake models and either deterministic frameworks, or optimizers which account for wind direction and yaw misalignment variability and uncertainty. Wake models rely on parameterizations of physical phenomena in the mean flow field, such as the wake spreading rate. The wake model parameters are uncertain and vary in time at a wind farm depending on the atmospheric conditions, including turbulence intensity, stability, shear, veer, and other atmospheric features. In this study, we develop a yaw set-point optimization approach which includes model parameter uncertainty, in addition to wind condition variability and uncertainty. The…
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