Paper published on a website (Scientific congresses and symposiums)
How to craft a deep reinforcement learning policy for wind farm flow control
Kadoche, Elie; Bianchi, Pascal; Carton, Florence et al.
202518th European Workshop on Reinforcement Learning (EWRL 2025)
Peer reviewed
 

Files


Full Text
19_How_to_craft_a_deep_reinfor.pdf
Author postprint (1.34 MB)
Download

All documents in ORBi are protected by a user license.

Send to



Details



Keywords :
wind farm; reinforcemet learning; deep learning; wave affects; wind farm control
Abstract :
[en] Within wind farms, wake effects between turbines can significantly reduce overall energy production. Wind farm flow control encompasses methods designed to mitigate these effects through coordinated turbine control. Wake steering, for example, consists in intentionally misaligning certain turbines with the wind to optimize airflow and increase power output. However, designing a robust wake steering controller remains challenging, and existing machine learning approaches are limited to quasi-static wind conditions or small wind farms. This work presents a new deep reinforcement learning methodology to develop a wake steering policy that overcomes these limitations. Our approach introduces a novel architecture that combines graph attention networks and multi-head self-attention blocks, alongside a novel reward function and training strategy. The resulting model computes the yaw angles of each turbine, optimizing energy production in time-varying wind conditions. An empirical study conducted on steady-state, low-fidelity simulation, shows that our model requires approximately 10 times fewer training steps than a fully connected neural network and achieves more robust performance compared to a strong optimization baseline, increasing energy production by up to 14 %. To the best of our knowledge, this is the first deep reinforcement learning-based wake steering controller to generalize effectively across any time-varying wind conditions in a low-fidelity, steady-state numerical simulation setting.
Disciplines :
Energy
Computer science
Author, co-author :
Kadoche, Elie
Bianchi, Pascal
Carton, Florence
Ciblat, Philippe
Ernst, Damien  ;  Université de Liège - ULiège > Département d'électricité, électronique et informatique (Institut Montefiore) > Smart grids
Language :
English
Title :
How to craft a deep reinforcement learning policy for wind farm flow control
Publication date :
17 July 2025
Event name :
18th European Workshop on Reinforcement Learning (EWRL 2025)
Event date :
September 17th -19th, 2025
Audience :
International
Peer review/Selection committee :
Peer reviewed
Source :
Development Goals :
7. Affordable and clean energy
Available on ORBi :
since 16 June 2025

Statistics


Number of views
167 (7 by ULiège)
Number of downloads
52 (2 by ULiège)

Bibliography


Similar publications



Contact ORBi