Mathematical test models for superparametrization in anisotropic turbulence.

  title={Mathematical test models for superparametrization in anisotropic turbulence.},
  author={Andrew J. Majda and Marcus J. Grote},
  journal={Proceedings of the National Academy of Sciences of the United States of America},
  volume={106 14},
The complexity of anisotropic turbulent processes over a wide range of spatiotemporal scales in engineering turbulence and climate atmosphere ocean science requires novel computational strategies with the current and next generations of supercomputers. In these applications the smaller-scale fluctuations do not statistically equilibrate as assumed in traditional closure modeling and intermittently send significant energy to the large-scale fluctuations. Superparametrization is a novel class of… CONTINUE READING
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