Super-Resolution Analysis via Machine Learning: A Survey for Fluid Flows
Abstract
This paper surveys machine-learning-based super-resolution reconstruction for vortical flows. Super resolution aims to find the high-resolution flow fields from low-resolution data and is generally an approach used in image reconstruction. In addition to surveying a variety of recent super-resolution applications, we provide case studies of super-resolution analysis for an example of two-dimensional decaying isotropic turbulence. We demonstrate that physics-inspired model designs enable successful reconstruction of vortical flows from spatially limited measurements. We also discuss the challenges and outlooks of machine-learning-based super-resolution analysis for fluid flow applications. The insights gained from this study can be leveraged for super-resolution analysis of numerical and experimental flow data.
Cite
@article{arxiv.2301.10937,
title = {Super-Resolution Analysis via Machine Learning: A Survey for Fluid Flows},
author = {Kai Fukami and Koji Fukagata and Kunihiko Taira},
journal= {arXiv preprint arXiv:2301.10937},
year = {2023}
}