Deep learning is rapidly emerging as a powerful tool for surrogate modeling and control in Computational Fluid Dynamics (CFD). Conceptually, these data-driven approaches are reshaping scientific practice, reviving the longstanding debate between data-driven and equation-based modeling. A central question is whether, and how, such methods can challenge or complement traditional CFD, which relies on well-established mathematical formulations. In this seminar, I will first outline the key principles that underpin efficient and reliable scientific modeling. I will then discuss how modern AI techniques can be designed to incorporate these principles and achieve practical effectiveness. In particular, I will highlight the role of implicit neural representations (INR) and uncertainty quantification (UQ) as critical components for robust and accurate surrogate modeling in aerospace engineering.
site du SP2MI-H2
11 BD Marie et Pierre Curie
86360 CHAASENEUIL DU Poitou
Prochains évènements
Retour à l'agendaReinforcement Twinning and the Reciprocal Learning of Models and Control Policies
Miguel Alfonso Mendez, de du von Karman Institute (Belgique)
