English

Adaptation of Engineering Wake Models using Gaussian Process Regression and High-Fidelity Simulation Data

Systems and Control 2020-12-30 v1 Machine Learning Systems and Control Optimization and Control Fluid Dynamics Machine Learning

Abstract

This article investigates the optimization of yaw control inputs of a nine-turbine wind farm. The wind farm is simulated using the high-fidelity simulator SOWFA. The optimization is performed with a modifier adaptation scheme based on Gaussian processes. Modifier adaptation corrects for the mismatch between plant and model and helps to converge to the actual plan optimum. In the case study the modifier adaptation approach is compared with the Bayesian optimization approach. Moreover, the use of two different covariance functions in the Gaussian process regression is discussed. Practical recommendations concerning the data preparation and application of the approach are given. It is shown that both the modifier adaptation and the Bayesian optimization approach can improve the power production with overall smaller yaw misalignments in comparison to the Gaussian wake model.

Keywords

Cite

@article{arxiv.2003.13323,
  title  = {Adaptation of Engineering Wake Models using Gaussian Process Regression and High-Fidelity Simulation Data},
  author = {Leif Erik Andersson and Bart Doekemeijer and Daan van der Hoek and Jan-Willem van Wingerden and Lars Imsland},
  journal= {arXiv preprint arXiv:2003.13323},
  year   = {2020}
}

Comments

Initial submission to the Science of Making Torque from Wind (TORQUE) 2020 conference, 10 pages, 6 figures (16/6)

R2 v1 2026-06-23T14:31:37.050Z