A decision-tree-based measure–correlate–predict approach for peak wind gust estimation from a global reanalysis dataset

Journal Article (2023)
Author(s)

S. Kartal (TU Delft - Atmospheric Remote Sensing)

Sukanta Basu (TU Delft - Atmospheric Remote Sensing)

S.J. Watson (TU Delft - Wind Energy)

Research Group
Atmospheric Remote Sensing
Copyright
© 2023 S. Kartal, S. Basu, S.J. Watson
DOI related publication
https://doi.org/10.5194/wes-8-1533-2023
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 S. Kartal, S. Basu, S.J. Watson
Research Group
Atmospheric Remote Sensing
Issue number
10
Volume number
8
Pages (from-to)
1533–1551
Reuse Rights

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Abstract

Peak wind gust (Wp) is a crucial meteorological variable for wind farm planning and operations. However, for many wind farm sites, there is a dearth of on-site measurements of Wp. In this paper, we propose a machine-learning approach (called INTRIGUE, decIsioN-TRee-based wInd GUst Estimation) that utilizes numerous inputs from a public-domain reanalysis dataset and, in turn, generates multi-year, site-specific Wp series. Through a systematic feature importance study, we also identify the most relevant meteorological variables for Wp estimation. The INTRIGUE approach outperforms the baseline predictions for all wind gust conditions. However, the performance of this proposed approach and the baselines for extreme conditions (i.e., Wp>20 m s−1) is less satisfactory.