Physics

Data-driven Fluid Flow Prediction Using Conditional Score-based Diffusion Models

Publié le - AICOMAS 2025 - Artificial Intelligence and computational Methodes in Applied sciences

Auteurs : Wilfried Genuist, Éric Savin, Filippo Gatti, Didier Clouteau

Advances in computational power have made turbulent field simulations central to many disciplines, yet traditional solvers struggle to deliver fast flow estimations due to the inherent chaotic nature of the problem. More recently, diffusion models have set new benchmarks in generative modeling for similar problems. In this regard, we propose a data-driven conditional score-based diffusion model for transonic fluid flow prediction, integrating an energy constraint based on the flow statistics to enhance temporal stability.