Image and video compression of fluid flow data
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Published:2023-02
Issue:1
Volume:37
Page:61-82
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ISSN:0935-4964
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Container-title:Theoretical and Computational Fluid Dynamics
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language:en
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Short-container-title:Theor. Comput. Fluid Dyn.
Author:
Anatharaman Vishal,Feldkamp Jason,Fukami Kai,Taira Kunihiko
Abstract
AbstractWe study the compression of spatial and temporal features in fluid flow data using multimedia compression techniques. The efficacy of spatial compression techniques, including JPEG and JPEG2000 (JP2), and spatiotemporal video compression techniques, namely H.264, H.265, and AV1, in limiting the introduction of compression artifacts and preserving underlying flow physics are considered for laminar periodic wake around a cylinder, two-dimensional turbulence, and turbulent channel flow. These compression techniques significantly compress flow data while maintaining dominant flow features with negligible error. AV1 and H.265 compressions present the best performance across a variety of canonical flow regimes and outperform traditional techniques such as proper orthogonal decomposition in some cases. These image and video compression algorithms are flexible, scalable, and generalizable holding potential for a wide range of applications in fluid dynamics in the context of data storage and transfer.Graphic abstract
Funder
Army Research Office Air Force Office of Scientific Research Department of Defense Vannevar Bush Faculty Fellowship
Publisher
Springer Science and Business Media LLC
Subject
Fluid Flow and Transfer Processes,General Engineering,Condensed Matter Physics,Computational Mechanics
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