Fourier neural operators for spatiotemporal dynamics in two-dimensional turbulence
High-fidelity direct numerical simulation of turbulent flows for most real-world applications remains an outstanding computational challenge. Several machine learning approaches have recently been proposed to alleviate the computational cost even though they become unstable or unphysical for long ti...
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Zusammenfassung: | High-fidelity direct numerical simulation of turbulent flows for most
real-world applications remains an outstanding computational challenge. Several
machine learning approaches have recently been proposed to alleviate the
computational cost even though they become unstable or unphysical for long time
predictions. We identify that the Fourier neural operator (FNO) based models
combined with a partial differential equation (PDE) solver can accelerate fluid
dynamic simulations and thus address computational expense of large-scale
turbulence simulations. We treat the FNO model on the same footing as a PDE
solver and answer important questions about the volume and temporal resolution
of data required to build pre-trained models for turbulence. We also discuss
the pitfalls of purely data-driven approaches that need to be avoided by the
machine learning models to become viable and competitive tools for long time
simulations of turbulence. |
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DOI: | 10.48550/arxiv.2409.14660 |