English

Elastoinertial turbulence: Data-driven reduced-order model based on manifold dynamics

Fluid Dynamics 2025-03-19 v2

Abstract

Elastoinertial turbulence (EIT) is a chaotic state that emerges in the flows of dilute polymer solutions. Direct numerical simulation (DNS) of EIT is highly computationally expensive due to the need to resolve the multi-scale nature of the system. While DNS of 2D EIT typically requires O(106)O(10^6) degrees of freedom, we demonstrate here that a data-driven modeling framework allows for the construction of an accurate model with 50 degrees of freedom. We achieve a low-dimensional representation of the full state by first applying a viscoelastic variant of proper orthogonal decomposition to DNS results, and then using an autoencoder. The dynamics of this low-dimensional representation are learned using the neural ODE method, which approximates the vector field for the reduced dynamics as a neural network. The resulting low-dimensional data-driven model effectively captures short-time dynamics over the span of one correlation time, as well as long-time dynamics, particularly the self-similar, nested traveling wave structure of 2D EIT in the parameter range considered.

Keywords

Cite

@article{arxiv.2410.02948,
  title  = {Elastoinertial turbulence: Data-driven reduced-order model based on manifold dynamics},
  author = {Manish Kumar and C. Ricardo Constante-Amores and Michael D. Graham},
  journal= {arXiv preprint arXiv:2410.02948},
  year   = {2025}
}

Comments

Accepted for publication in JFM Rapids

R2 v1 2026-06-28T19:07:46.193Z