Nonlinear parametric models of viscoelastic fluid flows
Cassio M. Oishi, Alan A. Kaptanoglu, J. Nathan Kutz, Steven, L. Brunton

TL;DR
This paper develops interpretable, data-driven reduced-order models for complex viscoelastic fluid flows, capturing dynamics across parameters and enabling efficient predictions of flow behavior.
Contribution
It introduces a novel sparse identification approach to create parametric nonlinear models for viscoelastic flows, extending reduced-order modeling to non-Newtonian fluids.
Findings
Accurately predicts transient flow evolution and spatial fields.
Models can extrapolate to high Weissenberg numbers.
Demonstrates effectiveness on classical Oldroyd-B flow.
Abstract
Reduced-order models have been widely adopted in fluid mechanics, particularly in the context of Newtonian fluid flows. These models offer the ability to predict complex dynamics, such as instabilities and oscillations, at a considerably reduced computational cost. In contrast, the reduced-order modeling of non-Newtonian viscoelastic fluid flows remains relatively unexplored. This work leverages the sparse identification of nonlinear dynamics algorithm to develop interpretable reduced-order models for viscoelastic flows. In particular, we explore a benchmark oscillatory viscoelastic flow on the four-roll mill geometry using the classical Oldroyd-B fluid. This flow exemplifies many canonical challenges associated with non-Newtonian flows, including transitions, asymmetries, instabilities, and bifurcations arising from the interplay of viscous and elastic forces, all of which…
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Taxonomy
TopicsRheology and Fluid Dynamics Studies · Model Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows
