The Potential of Machine Learning to Enhance Computational Fluid
Dynamics
- URL: http://arxiv.org/abs/2110.02085v1
- Date: Tue, 5 Oct 2021 14:34:16 GMT
- Title: The Potential of Machine Learning to Enhance Computational Fluid
Dynamics
- Authors: Ricardo Vinuesa and Steven L. Brunton
- Abstract summary: Machine learning is rapidly becoming a core technology for scientific computing.
This paper highlights some of the areas of highest potential impact, including to accelerate direct numerical simulations.
It is essential for the community to continue to establish benchmark systems and best practices for open-source software.
- Score: 0.696194614504832
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning is rapidly becoming a core technology for scientific
computing, with numerous opportunities to advance the field of computational
fluid dynamics. This paper highlights some of the areas of highest potential
impact, including to accelerate direct numerical simulations, to improve
turbulence closure modelling, and to develop enhanced reduced-order models. In
each of these areas, it is possible to improve machine learning capabilities by
incorporating physics into the process, and in turn, to improve the simulation
of fluids to uncover new physical understanding. Despite the promise of machine
learning described here, we also note that classical methods are often more
efficient for many tasks. We also emphasize that in order to harness the full
potential of machine learning to improve computational fluid dynamics, it is
essential for the community to continue to establish benchmark systems and best
practices for open-source software, data sharing, and reproducible research.
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