Divergence-Free Diffusion Models for Incompressible Fluid Flows
Wilfried Genuist, \'Eric Savin, Filippo Gatti, Didier Clouteau

TL;DR
This paper introduces divergence-free diffusion models tailored for simulating incompressible fluid flows, integrating physical constraints into generative models to improve turbulence prediction and out-of-distribution robustness.
Contribution
It develops divergence-free, score-based diffusion models with spectral projection and autoregressive conditioning for fluid flow simulation, a novel approach in physics-informed generative modeling.
Findings
Successfully reproduces statistical turbulence characteristics
Performs well on unseen flow scenarios
Maintains physical constraints in generated flows
Abstract
Generative diffusion models are extensively used in unsupervised and self-supervised machine learning with the aim to generate new samples from a probability distribution estimated with a set of known samples. They have demonstrated impressive results in replicating dense, real-world contents such as images, musical pieces, or human languages. This work investigates their application to the numerical simulation of incompressible fluid flows, with a view toward incorporating physical constraints such as incompressibility in the probabilistic forecasting framework enabled by generative networks. For that purpose, we explore different conditional, score-based diffusion models where the divergence-free constraint is imposed by the Leray spectral projector, and autoregressive conditioning is aimed at stabilizing the forecasted flow snapshots at distant time horizons. The proposed models are…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Model Reduction and Neural Networks · Markov Chains and Monte Carlo Methods
