Helping mitigate climate change through efficient reinforcement learning-based wind farm flow control (Papers Track) Spotlight

Elie KADOCHE (TotalEnergies); Pascal BIANCHI (Télécom Paris); Florence CARTON (TotalEnergies); Philippe CIBLAT (Télécom Paris); Damien ERNST (Montefiore Institute)

Paper PDF Slides PDF Poster File Recorded Talk NeurIPS 2025 Poster Cite
Power & Energy Reinforcement Learning

Abstract

Improving wind farm efficiency is critical for reducing greenhouse gas emissions and scaling renewable energies. One effective approach to increase a wind farm's power output is wake steering, where certain turbines are intentionally misaligned with the wind to enhance downstream airflow and reduce wake losses. However, designing robust, large-scale wake steering controllers remains challenging due to uncertain and time-varying wind conditions. We propose an attention-based reinforcement learning architecture and a carefully designed reward shaping methodology to develop more efficient wake steering controllers. Using a steady-state, low-fidelity simulator, we show that our approach increases energy capture relative to strong baselines, illustrating how machine learning can directly improve renewable energy generation and contribute to climate change mitigation.

Recorded Talk (direct link)

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