Reduced order models for Lagrangian hydrodynamics

@article{Copeland2022ReducedOM,
  title={Reduced order models for Lagrangian hydrodynamics},
  author={Dylan M. Copeland and Siu Wun Cheung and Kevin Huynh and Youngsoo Choi},
  journal={ArXiv},
  year={2022},
  volume={abs/2104.11404}
}

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LAGRANGIAN INVESTIGATIONS OF TURBULENCE

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Basic results in Kolmogorov similarity are examined, giving an estimate of an inertial-range universal constant and the grid resolution and Reynolds number needed to attain the requisite scaling range of time lags.
...