Learned Coarse Models for Efficient Turbulence Simulation
- URL: http://arxiv.org/abs/2112.15275v2
- Date: Tue, 4 Jan 2022 16:32:04 GMT
- Title: Learned Coarse Models for Efficient Turbulence Simulation
- Authors: Kimberly Stachenfeld, Drummond B. Fielding, Dmitrii Kochkov, Miles
Cranmer, Tobias Pfaff, Jonathan Godwin, Can Cui, Shirley Ho, Peter Battaglia,
Alvaro Sanchez-Gonzalez
- Abstract summary: We show that our proposed model can simulate turbulent dynamics more accurately than classical numerical solvers at the same low resolutions.
Our model is trained end-to-end from data and is capable of learning a range of challenging chaotic and turbulent dynamics at low resolution.
- Score: 7.032136054073367
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Turbulence simulation with classical numerical solvers requires very
high-resolution grids to accurately resolve dynamics. Here we train learned
simulators at low spatial and temporal resolutions to capture turbulent
dynamics generated at high resolution. We show that our proposed model can
simulate turbulent dynamics more accurately than classical numerical solvers at
the same low resolutions across various scientifically relevant metrics. Our
model is trained end-to-end from data and is capable of learning a range of
challenging chaotic and turbulent dynamics at low resolution, including
trajectories generated by the state-of-the-art Athena++ engine. We show that
our simpler, general-purpose architecture outperforms various more specialized,
turbulence-specific architectures from the learned turbulence simulation
literature. In general, we see that learned simulators yield unstable
trajectories; however, we show that tuning training noise and temporal
downsampling solves this problem. We also find that while generalization beyond
the training distribution is a challenge for learned models, training noise,
convolutional architectures, and added loss constraints can help. Broadly, we
conclude that our learned simulator outperforms traditional solvers run on
coarser grids, and emphasize that simple design choices can offer stability and
robust generalization.
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