Online learning of eddy-viscosity and backscattering closures for geophysical turbulence using ensemble Kalman inversion
Yifei Guan, Pedram Hassanzadeh, Tapio Schneider, Oliver Dunbar, Daniel Zhengyu Huang, Jinlong Wu, and Ignacio Lopez-Gomez

TL;DR
This paper introduces an online learning approach using ensemble Kalman inversion to optimize subgrid-scale turbulence models in geophysical flows, achieving data-efficient, interpretable, and generalizable closures that outperform traditional methods.
Contribution
It presents a novel online learning framework for tuning physics-based turbulence closures with minimal data, enhancing their accuracy and generalizability across different flow regimes.
Findings
Optimized parameters are consistent across diverse flow regimes.
LES with optimized closures better captures extreme events in vorticity PDFs.
The approach outperforms standard and dynamic models in spectral and transfer metrics.
Abstract
Different approaches to using data-driven methods for subgrid-scale closure modeling have emerged recently. Most of these approaches are data-hungry, and lack interpretability and out-of-distribution generalizability. Here, we use {online} learning to address parametric uncertainty of well-known physics-based large-eddy simulation (LES) closures: the Smagorinsky (Smag) and Leith eddy-viscosity models (1 free parameter) and the Jansen-Held (JH) backscattering model (2 free parameters). For 8 cases of 2D geophysical turbulence, optimal parameters are estimated, using ensemble Kalman inversion (EKI), such that for each case, the LES' energy spectrum matches that of direct numerical simulation (DNS). Only a small training dataset is needed to calculate the DNS spectra (i.e., the approach is {data-efficient}). We find the optimized parameter(s) of each closure to be constant across broad…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Reservoir Engineering and Simulation Methods · Energy Load and Power Forecasting
