Learning Reduced Fluid Dynamics

Abstract

Predicting the state evolution of ultra high-dimensional, time-reversible fluid dynamic systems is a crucial but computationally expensive task. Existing physics-informed neural networks either incur high inference cost or cannot preserve the time-reversible nature of the underlying dynamics system. We propose a model-based approach to identify low-dimensional, time reversible, nonlinear fluid dynamic systems. Our method utilizes the symplectic structure of reduced Eulerian fluid and use stochastic Riemann optimization to obtain a low-dimensional bases that minimize the expected trajectory-wise dimension-reduction error over a given distribution of initial conditions. We show that such minimization is well-defined since the reduced trajectories are differentiable with respect to the subspace bases over the entire Grassmannian manifold, under proper choices of timestep sizes and numerical integrators. Finally, we propose a loss function measuring the trajectory-wise discrepancy between the original and reduced models. By tensor precomputation, we show that gradient information of such loss function can be evaluated efficiently over a long trajectory without time-integrating the high-dimensional dynamic system. Through evaluations on a row of simulation benchmarks, we show that our method reduces the discrepancy by 50-90 percent over conventional reduced models and we outperform PINNs by exactly preserving the time reversibility.

Cite

Text

Pan et al. "Learning Reduced Fluid Dynamics." AAAI Conference on Artificial Intelligence, 2024. doi:10.1609/AAAI.V38I13.29367

Markdown

[Pan et al. "Learning Reduced Fluid Dynamics." AAAI Conference on Artificial Intelligence, 2024.](https://mlanthology.org/aaai/2024/pan2024aaai-learning/) doi:10.1609/AAAI.V38I13.29367

BibTeX

@inproceedings{pan2024aaai-learning,
  title     = {{Learning Reduced Fluid Dynamics}},
  author    = {Pan, Zherong and Gao, Xifeng and Wu, Kui},
  booktitle = {AAAI Conference on Artificial Intelligence},
  year      = {2024},
  pages     = {14517-14526},
  doi       = {10.1609/AAAI.V38I13.29367},
  url       = {https://mlanthology.org/aaai/2024/pan2024aaai-learning/}
}