A Conditionally Cubic-Gaussian Stochastic Lagrangian Model for Acceleration in Isotropic Turbulence

ORAL

Abstract

The modeling of fluid-particle acceleration in isotropic turbulence via stochastic models for the Lagrangian velocity, acceleration and a dissipation rate variable is considered. We use data from direct numerical simulations (DNS) up to Taylor-scale Reynolds number 650 to construct a stochastic model that is exactly consistent with Gaussian velocity and conditionally cubic-Gaussian acceleration statistics. This model captures both the effects of intermittency of dissipation on acceleration and the conditional dependence of acceleration on pseudo-dissipation (which differs from the Kolmogorov 1962 prediction). The large-time behavior of the new model is that of a velocity-dissipation model that can be matched with DNS data for conditional second-order Lagrangian velocity structure functions. As a result, the diffusion coefficient for the new model incorporates two-time information and their Reynolds-number dependence from DNS. Model predictions for conditional and unconditional velocity statistics are shown to agree well with DNS.

*Supported by NSF Grants CTS-0328314 and 0328329.

Authors

  • A.G. Lamorgese

  • Stephen Pope

    • Cornell University
    • Cornell Univ.
  • P.K. Yeung

    • Georgia Tech.
    • Georgia Institute of Technology
    • Georgia Tech
  • B.L. Sawford

    • Monash Univ.