Shyam S. Nair, Vishal A. Wadhai, Robert F. Kunz, Xiang I. A. Yang
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引用次数: 0
Abstract
We report direct numerical simulation (DNS) results of the rough-wall
channel, focusing on roughness with high $k_{rms}/k_a$ statistics but small to
negative $Sk$ statistics, and we study the implications of this new dataset on
rough-wall modelling. Here, $k_{rms}$ is the root-mean-square, $k_a$ is the
first order moment of roughness height, and $Sk$ is the skewness. The effects
of packing density, skewness and arrangement of roughness elements on mean
streamwise velocity, equivalent roughness height ($z_0$) and Reynolds and
dispersive stresses have been studied. We demonstrate that two-point
correlation lengths of roughness height statistics play an important role in
characterizing rough surfaces with identical moments of roughness height but
different arrangements of roughness elements. Analysis of the present as well
as historical data suggests that the task of rough-wall modelling is to
identify geometric parameters that distinguish the rough surfaces within the
calibration dataset. We demonstrate a novel feature selection procedure to
determine these parameters. Further, since there is not a finite set of
roughness statistics that distinguish between all rough surfaces, we argue that
obtaining a universal rough-wall model for making equivalent sand-grain
roughness ($k_s$) predictions would be challenging, and that each rough-wall
model would have its applicable range. This motivates the development of
group-based rough-wall models. The applicability of multi-variate polynomial
regression and feedforward neural networks for building such group-based
rough-wall models using the selected features has been shown.