English

Physics-informed neural network to augment experimental data: an application to stratified flows

Fluid Dynamics 2023-09-27 v1

Abstract

We develop a physics-informed neural network (PINN) to significantly augment state-of-the-art experimental data and apply it to stratified flows. The PINN is a fully-connected deep neural network fed with time-resolved, three-component velocity fields and density fields measured simultaneously in three dimensions at Re=O(103)Re = O(10^3) in a stratified inclined duct experiment. The PINN enforces incompressibility, the governing equations for momentum and buoyancy, and the boundary conditions by automatic differentiation. The physics-constrained, augmented data are output at an increased spatio-temporal resolution and demonstrate five key results: (i) the elimination of measurement noise; (ii) the correction of distortion caused by the scanning measurement technique; (iii) the identification of weak but dynamically important three-dimensional vortices; (iv) the revision of turbulent energy budgets and mixing efficiency; and (v) the prediction of the latent pressure field and its role in the observed Holmboe wave dynamics. These results mark a significant step forward in furthering the reach of experiments, especially in the context of turbulence, where accurately computing three-dimensional gradients and resolving small scales remain enduring challenges.

Keywords

Cite

@article{arxiv.2309.14722,
  title  = {Physics-informed neural network to augment experimental data: an application to stratified flows},
  author = {Lu Zhu and Xianyang Jiang and Adrien Lefauve and Rich R. Kerswell and P. F. Linden},
  journal= {arXiv preprint arXiv:2309.14722},
  year   = {2023}
}
R2 v1 2026-06-28T12:32:29.101Z