1. Physics-agnostic and Physics-infused machine learning for thin films flows: modeling, and predictions from small data
- Author
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Martin-Linares, Cristina P., Psarellis, Yorgos M., Karapetsas, Georgios, Koronaki, Eleni D., and Kevrekidis, Ioannis G.
- Subjects
Fluid Dynamics (physics.flu-dyn) ,FOS: Mathematics ,FOS: Physical sciences ,Physics - Fluid Dynamics ,Mathematics - Numerical Analysis ,Numerical Analysis (math.NA) - Abstract
Numerical simulations of multiphase flows are crucial in numerous engineering applications, but are often limited by the computationally demanding solution of the Navier-Stokes (NS) equations. Here, we present a data-driven workflow where a handful of detailed NS simulation data are leveraged into a reduced-order model for a prototypical vertically falling liquid film. We develop a physics-agnostic model for the film thickness, achieving a far better agreement with the NS solutions than the asymptotic Kuramoto-Sivashinsky (KS) equation. We also develop two variants of physics-infused models providing a form of calibration of a low-fidelity model (i.e. the KS) against a few high-fidelity NS data. Finally, predictive models for missing data are developed, for either the amplitude, or the full-field velocity and even the flow parameter from partial information. This is achieved with the so-called "Gappy Diffusion Maps", which we compare favorably to its linear counterpart, Gappy POD.
- Published
- 2023
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