Articles | Volume 10, issue 1
https://doi.org/10.5194/wes-10-143-2025
https://doi.org/10.5194/wes-10-143-2025
Research article
 | 
15 Jan 2025
Research article |  | 15 Jan 2025

Characterization of local wind profiles: a random forest approach for enhanced wind profile extrapolation

Farkhondeh (Hanie) Rouholahnejad and Julia Gottschall

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Interactive discussion

Status: closed

Comment types: AC – author | RC – referee | CC – community | EC – editor | CEC – chief editor | : Report abuse
  • RC1: 'Comment on wes-2023-178', Anonymous Referee #1, 26 Feb 2024
  • RC2: 'Comment on wes-2023-178', Anonymous Referee #2, 05 Mar 2024
  • AC1: 'Comment on wes-2023-178', Farkhondeh Rouholahnejad, 09 Aug 2024

Peer review completion

AR: Author's response | RR: Referee report | ED: Editor decision | EF: Editorial file upload
AR by Farkhondeh Rouholahnejad on behalf of the Authors (26 Aug 2024)  Author's response   Author's tracked changes   Manuscript 
ED: Publish subject to technical corrections (25 Oct 2024) by Julie Lundquist
ED: Publish subject to technical corrections (29 Oct 2024) by Carlo L. Bottasso (Chief editor)
AR by Farkhondeh Rouholahnejad on behalf of the Authors (07 Nov 2024)  Author's response   Manuscript 
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Short summary
In wind energy, precise wind speed prediction at hub height is vital. Our study in the Dutch North Sea reveals that the on-site-trained random forest model outperforms the global reanalysis data, ERA5, in accuracy and precision. Trained within a 200 km range, the model effectively extends the wind speed vertically but experiences bias. It also outperforms ERA5 corrected with measurements in capturing wind speed variations and fine wind patterns, highlighting its potential for site assessment.
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