Physics-informed data based neural networks for two-dimensional turbulence
Vijay Kag, Kannabiran Seshasayanan, Venkatesh Gopinath

TL;DR
This paper introduces an improved physics-informed neural network (PINN) approach for modeling two-dimensional turbulence, effectively capturing energy distribution across scales with minimal data, outperforming standard PINNs.
Contribution
The authors develop a novel PINN model that separately trains low and high wavenumber behaviors, enhancing small-scale turbulence predictions from sparse data.
Findings
Accurately reproduces large-scale turbulence statistics.
Captures kinetic energy spectra across 8-9 decades.
Requires only 0.1% of data for effective modeling.
Abstract
Turbulence remains a problem that is yet to be fully understood, with experimental and numerical studies aiming to fully characterise the statistical properties of turbulent flows. Such studies require huge amount of resources to capture, simulate, store and analyse the data. In this work, we present physics-informed neural network (PINN) based methods to predict flow quantities and features of two-dimensional turbulence with the help of sparse data in a rectangular domain with periodic boundaries. While the PINN model can reproduce all the statistics at large scales, the small scale properties are not captured properly. We introduce a new PINN model that can effectively capture the energy distribution at small scales performing better than the standard PINN based approach. It relies on the training of the low and high wavenumber behaviour separately leading to a better estimate of the…
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