Predicting high-resolution turbulence details in space and time
Abstract
Predicting the fine and intricate details of a turbulent flow field in both space and time from a coarse input remains a major challenge despite the availability of modern machine learning tools. In this paper, we present a simple and effective dictionary-based approach to spatio-temporal upsampling of fluid simulation. We demonstrate that our neural network approach can reproduce the visual complexity of turbulent flows from spatially and temporally coarse velocity fields even when using a generic training set. Moreover, since our method generates finer spatial and/or temporal details through embarrassingly-parallel upsampling of small local patches, it can efficiently predict high-resolution turbulence details across a variety of grid resolutions. As a consequence, our method offers a whole range of applications varying from fluid flow upsampling to fluid data compression. We demonstrate the efficiency and generalizability of our method for synthesizing turbulent flows on a series of complex examples, highlighting dramatically better results in spatio-temporal upsampling and flow data compression than existing methods as assessed by both qualitative and quantitative comparisons.
Additional Information
© 2021 Association for Computing Machinery. Published: 10 December 2021. The authors would like to thank all reviewers for their constructive comments on shaping this paper. This work was supported by the National Natural Science Foundation of China (No. 62072310 and No. 61976138) as well as ShanghaiTech University. M. Desbrun gratefully acknowledges generous support from Inria, Pixar Animation Studios and Ansys Inc. 3D mesheswere provided by MFC at 3DWarehouse and shivakeswani at cgtrader (Fig. 1), printable_models at free3d (Fig. 8), pjedvaj at cgtrader (Fig. 10), and Romain Perera at TurboSquid (Fig. 13).Attached Files
Published - 3478513.3480492.pdf
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Additional details
- Eprint ID
- 113161
- Resolver ID
- CaltechAUTHORS:20220128-526470800
- National Natural Science Foundation of China
- 62072310
- National Natural Science Foundation of China
- 61976138
- ShanghaiTech University
- Inria
- Pixar Animation Studios
- Ansys Inc.
- Created
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2022-01-29Created from EPrint's datestamp field
- Updated
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2022-01-29Created from EPrint's last_modified field