FLU-DYNLGCOMP-PHSep 7, 2024

Single-snapshot machine learning for super-resolution of turbulence

arXiv:2409.04923v239 citationsh-index: 24
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of reducing data requirements for machine-learning practitioners in turbulence analysis, though it is incremental in applying existing methods to new data contexts.

The study tackled the problem of data-hungry machine learning in turbulence by demonstrating that nonlinear techniques can reconstruct high-resolution turbulent flows from a single snapshot, achieving successful reconstruction for two-dimensional isotropic turbulence and three-dimensional turbulent channel flow.

Modern machine-learning techniques are generally considered data-hungry. However, this may not be the case for turbulence as each of its snapshots can hold more information than a single data file in general machine-learning settings. This study asks the question of whether nonlinear machine-learning techniques can effectively extract physical insights even from as little as a {\it single} snapshot of turbulent flow. As an example, we consider machine-learning-based super-resolution analysis that reconstructs a high-resolution field from low-resolution data for two examples of two-dimensional isotropic turbulence and three-dimensional turbulent channel flow. First, we reveal that a carefully designed machine-learning model trained with flow tiles sampled from only a single snapshot can reconstruct vortical structures across a range of Reynolds numbers for two-dimensional decaying turbulence. Successful flow reconstruction indicates that nonlinear machine-learning techniques can leverage scale-invariance properties to learn turbulent flows. We also show that training data of turbulent flows can be cleverly collected from a single snapshot by considering characteristics of rotation and shear tensors. Second, we perform the single-snapshot super-resolution analysis for turbulent channel flow, showing that it is possible to extract physical insights from a single flow snapshot even with inhomogeneity. The present findings suggest that embedding prior knowledge in designing a model and collecting data is important for a range of data-driven analyses for turbulent flows. More broadly, this work hopes to stop machine-learning practitioners from being wasteful with turbulent flow data.

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