Frame invariant neural network closures for Kraichnan turbulence
Suraj Pawar, Omer San, Adil Rasheed, Prakash Vedula

TL;DR
This paper introduces a physics-informed neural network closure model for turbulence that embeds physical symmetries to improve accuracy, stability, and generalization in coarse-grid simulations of geophysical flows.
Contribution
It develops a frame invariant neural network closure that guarantees physical symmetries without regularization, enhancing turbulence modeling accuracy and robustness.
Findings
Accurately predicts subgrid scale source terms
Respects physical symmetries like translation, rotation, Galilean invariance
Demonstrates stability and generalization across different conditions
Abstract
Numerical simulations of geophysical and atmospheric flows have to rely on parameterizations of subgrid scale processes due to their limited spatial resolution. Despite substantial progress in developing parameterization (or closure) models for subgrid scale (SGS) processes using physical insights and mathematical approximations, they remain imperfect and can lead to inaccurate predictions. In recent years, machine learning has been successful in extracting complex patterns from high-resolution spatio-temporal data, leading to improved parameterization models, and ultimately better coarse grid prediction. However, the inability to satisfy known physics and poor generalization hinders the application of these models for real-world problems. In this work, we propose a frame invariant closure approach to improve the accuracy and generalizability of deep learning-based subgrid scale closure…
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