English

Tailor-designed models for the turbulent velocity gradient through normalizing flow

Fluid Dynamics 2024-03-01 v1

Abstract

Small-scale turbulence can be comprehensively described in terms of velocity gradients, which makes them an appealing starting point for low-dimensional modeling. Typical models consist of stochastic equations based on closures for non-local pressure and viscous contributions. The fidelity of the resulting models depends on the accuracy of the underlying modeling assumptions. Here, we discuss an alternative data-driven approach leveraging machine learning to derive a velocity gradient model which captures its statistics by construction. We use a normalizing flow to learn the velocity gradient probability density function (PDF) from direct numerical simulation (DNS) of incompressible turbulence. Then, by using the equation for the single-time PDF of the velocity gradient, we construct a deterministic, yet chaotic, dynamical system featuring the learned steady-state PDF by design. Finally, utilizing gauge terms for the velocity gradient single-time statistics, we optimize the time correlations as obtained from our model against the DNS data. As a result, the model time realizations statistically closely resemble the time series from DNS.

Keywords

Cite

@article{arxiv.2402.19158,
  title  = {Tailor-designed models for the turbulent velocity gradient through normalizing flow},
  author = {Maurizio Carbone and Vincent J. Peterhans and Alexander S. Ecker and Michael Wilczek},
  journal= {arXiv preprint arXiv:2402.19158},
  year   = {2024}
}
R2 v1 2026-06-28T15:04:35.320Z