An artificial neural network model for recovering small-scale velocity in large-eddy simulation of isotropic turbulent flows
Jiangtao Tan,
Guodong Jin
Abstract:Small-scale motions in turbulent flows play a significant role in various small-scale processes, such as particle relative dispersion and collision, bubble or droplet deformation, and orientation dynamics of non-sphere particles. Recovering the small-scale flows that cannot be resolved in large eddy simulation (LES) is of great importance for such processes sensitive to the small-scale motions in turbulent flows. This study proposes a subgrid-scale model for recovering the small-scale turbulent velocity field … Show more
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