Articles | Volume 10, issue 11
https://doi.org/10.5194/wes-10-2705-2025
© Author(s) 2025. This work is distributed under the Creative Commons Attribution 4.0 License.
A robust active power control algorithm to maximize wind farm power tracking margins in waked conditions
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- Final revised paper (published on 21 Nov 2025)
- Preprint (discussion started on 14 May 2025)
Interactive discussion
Status: closed
Comment types: AC – author | RC – referee | CC – community | EC – editor | CEC – chief editor
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RC1: 'Comment on wes-2025-66', Anonymous Referee #1, 23 May 2025
- AC1: 'Reply on RC1', Carlo L. Bottasso, 01 Aug 2025
- AC2: 'Reply on RC1', Carlo L. Bottasso, 01 Aug 2025
- AC3: 'Reply on RC1', Carlo L. Bottasso, 01 Aug 2025
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RC2: 'Comment on wes-2025-66', Anonymous Referee #2, 30 May 2025
- AC1: 'Reply on RC1', Carlo L. Bottasso, 01 Aug 2025
Peer review completion
AR – Author's response | RR – Referee report | ED – Editor decision | EF – Editorial file upload
AR by Carlo L. Bottasso on behalf of the Authors (01 Aug 2025)
Author's response
Author's tracked changes
Manuscript
ED: Referee Nomination & Report Request started (01 Aug 2025) by Majid Bastankhah
RR by Anonymous Referee #1 (14 Aug 2025)
RR by Anonymous Referee #2 (25 Aug 2025)
ED: Publish subject to minor revisions (review by editor) (26 Aug 2025) by Majid Bastankhah
AR by Carlo L. Bottasso on behalf of the Authors (23 Sep 2025)
Author's response
Author's tracked changes
Manuscript
ED: Publish as is (28 Sep 2025) by Majid Bastankhah
ED: Publish as is (01 Oct 2025) by Paul Fleming (Chief editor)
AR by Carlo L. Bottasso on behalf of the Authors (06 Oct 2025)
Manuscript
This manuscript introduces a robust active power control (APC) algorithm for wind farms, aiming to maximize power availability and accurately track reference power signals amidst turbulent wind lulls. The algorithm optimizes turbine operational setpoints using an augmented version of FLORIS, with induction control and wake steering to increase power margins. It incorporates a proportional-integral closed loop for real-time error correction. The results, based on steady-state and unsteady scenarios via large-eddy simulations (LES), demonstrate that it is possible to significantly enhances power tracking by reducing saturation events. The proposed approach seems to be particularly effective under strong wake impingement and high power demand conditions.
Overall the manuscript is well written and well organised, with convincing results. It should also be noted that the authors are clearly highlighting the limitations of their approach. The conclusion and outlook section is providing an excellent summary of the work. I am definitely in favor of a publication and only have few comments for the authors to address:
1-The introduction is possibly missing few words about recent AI-based methods such as Reinforcement Learning for the optimization of the performance of wind farms.
2-The authors should provide the main findings from their two previous studies (mentioned line 77-79), and explain why and how the method needed to be improved.
3-Can the authors expend a bit on the tracking error mentioned line 97. Is it important?
4-The proposed approach is based on the offline optimization of the control setpoints that, once stored in look-up tables, are interpolated at runtime. Would there be an advantage in doing this process online, especially for unseen scenarios?
5-I think the authors should have a small discussion about the type of optimizations that are suitable for wind farm problems. They are using gradient-based optimization but recently, several papers have been published with different approaches.
6-It would be good to add a sentence to justify the use of the Gauss Curl Hybrid wake model (I guess it is because it is a very accurate wake model).
7-The authors states that “Another limitation of the unsteady results is the use of rigid wind turbine models in the simulations. If, on the one hand, this is not expected to play a major role in the behavior of wakes”. I would expect aeroelastic effects to have significant effects on the behavior of turbine wakes, and hence of any optimization. Can the authors add some references to back up their claim?
8-How many optimization were performed in section 2.5 and what was the overall cost?
9-What is the rational for using the Jensen model in section 2.6?
10-Why is it necessary to add a zero-mean white noise to improve the robustness of the gains in section 2.6?
11-Would it be possible to add few lines to describe the in-house LES code used for this work?
12-Figure 7 is not really discussed.
13-Is it realistic (representative of real conditions) to have TI % above 25% in figure 11 in the wake of the third turbine?
14-Would it be possible to discuss about the yaw/pitch angles for each turbine (with respect to the wind direction in section 3)? I would expect to always have a zero yaw angles for turbine 3 (as there is no turbine downstream), a rather large yaw angle for the first turbine and a rather small yaw angle for the second one. It would be interesting to discuss any correlation with the reference power demand signal.
15-I have a question regarding the fatigue analysis. What is the main cause of fatigue? The turbulence level experienced by the turbine (which seems to be the case here) or the wind speed (which is higher for the first turbine than for the third turbine)? Also, would a turbine experience more fatigue when yawed than when in greedy mode? As an interested reader, I would find a bit more explanation extremely helpful in this section of the manuscript.