Rough surfaces in under-explored surface morphology space and their implications on roughness modelling

Shyam S. Nair, Vishal A. Wadhai, Robert F. Kunz, Xiang I. A. Yang
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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.
探索不足的表面形态空间中的粗糙表面及其对粗糙度建模的影响
我们报告了粗糙壁通道的直接数值模拟(DNS)结果,重点是具有较高 $k_{rms}/k_a$ 统计量但具有较小负值 $Sk$ 统计量的粗糙度,并研究了这一新数据集对粗糙壁建模的影响。这里,$k_{rms}$ 是均方根,$k_a$ 是粗糙度高度的一阶矩,$Sk$ 是偏斜度。我们研究了堆积密度、倾斜度和粗糙度元素排列对平均流速、等效粗糙度高度($z_0$)以及雷诺应力和分散应力的影响。我们证明了粗糙度高度统计的两点相关长度在描述粗糙度高度矩相同但粗糙度元素排列不同的粗糙表面时起着重要作用。对当前数据和历史数据的分析表明,粗糙表面建模的任务是识别校准数据集中能够区分粗糙表面的几何参数。我们展示了一种新颖的特征选择程序来确定这些参数。此外,由于并不存在一组有限的粗糙度统计数据来区分所有粗糙表面,因此我们认为,要获得一个通用的粗糙壁模型来进行等效的砂粒粗糙度($k_s$)预测是具有挑战性的,而且每个粗糙壁模型都有其适用范围。这就促使我们开发基于组的毛壁模型。多变量多项式回归和前馈神经网络在利用所选特征建立基于组的粗糙度模型方面的适用性已经得到证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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