AI-Powered Wind Field Modeling for Next-Generation Wind Farm Optimization
| ABG-135998 | Sujet de Thèse | |
| 24/02/2026 | Contrat doctoral |
- Mathématiques
Description du sujet
Wind farms are essential to the energy transition, but their optimization remains limited by prediction models that use simplified representations of wind, ignoring the complexity of atmospheric conditions. The result: inaccurate predictions of energy production and turbine lifespan, hindering optimization and driving up costs.
The objective: to create a fast and accurate digital twin of wind fields at wind farm scale. You will develop generative models (probabilistic diffusion, autoencoders, transformers) capable of reproducing in a matter of seconds what high-fidelity simulations (Méso-NH) compute in several hours.
The challenge: encoding the complex physics of turbulent flows into deep learning architectures while preserving essential spatio-temporal properties. You will work with data from Méso-NH (CNRS/Météo-France) to train and validate your approaches.
The impact: faster feasibility studies, optimized turbine placement, and improved predictive maintenance.
What you will gain: a rare profile at the physics/AI interface, and transferable skills well beyond the energy sector.
Your supervisors: Prof. Taraneh Sayadi (Cnam, M2N), expert in Scientific Machine Learning and model reduction for turbulent flows. Dr. Emeline Noël (IFPEN), specialist in boundary layer/wake interactions and Méso-NH contributor. Dr. Guillaume Enchéry (co-supervisor), expert in model reduction for PDEs.
Prise de fonction :
Nature du financement
Précisions sur le financement
Présentation établissement et labo d'accueil
IFP Energies nouvelles is a public research, innovation and training organization whose mission is to develop high-performance, cost-effective, clean and sustainable technologies in the fields of energy, transport and the environment. For more information, please visit our website.
IFPEN provides its PhD students with a stimulating research environment and high-performance computing resources. In addition to a competitive salary and social benefits package, IFPEN offers all doctoral candidates the opportunity to participate in dedicated seminars and training programs.
Site web :
Profil du candidat
Required skills Applied mathematics (PDEs, modelling), Machine Learning (PyTorch preferred), multidisciplinary collaboration
Academic requirements MSc in Mathematics and/or Computer Science, or equivalent engineering degree
Language requirements English level B2 (CEFR)
Vous avez déjà un compte ?
Nouvel utilisateur ?
Vous souhaitez recevoir nos infolettres ?
Découvrez nos adhérents
Laboratoire National de Métrologie et d'Essais - LNE
Institut Sup'biotech de Paris
ANRT
Nokia Bell Labs France
SUEZ
Généthon
ASNR - Autorité de sûreté nucléaire et de radioprotection - Siège
Aérocentre, Pôle d'excellence régional
Nantes Université
Medicen Paris Region
Ifremer
Groupe AFNOR - Association française de normalisation
ONERA - The French Aerospace Lab
TotalEnergies
Tecknowmetrix
Servier
ADEME
