不同湍流模型预测的 Rood 机翼下游尾流特征

IF 2.7 4区 工程技术 Q2 ENGINEERING, CIVIL Journal of Marine Science and Technology Pub Date : 2024-07-02 DOI:10.1007/s00773-024-01015-1
Yieng Teen Huong, Zhi Quan Leong, Alexander Conway, Jonathan Duffy, Dev Ranmuthugala
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引用次数: 0

摘要

计算流体动力学用于分析马蹄涡对代表水下航行器风帆(即罗德翼)的简化几何体的尾流特征的影响。帆的尾流特征会影响水下航行器下游部件(如尾部附属装置和螺旋桨)的性能,因此备受关注。本文使用的是安装在平板上的通用翼体 Rood 翼,因为它的低纵横比与水下航行器的风帆相当,而且有大量已公布的实验数据可供验证。本文采用了两种主要模拟方案,即雷诺平均纳维-斯托克斯(RANS)和包含多种湍流模型的混合 RANS-Large Eddy 仿真(LES)。由于迄今为止的文献主要只关注翼根周围的近场流动特征,因此还对这两种方案预测下游尾流特征的能力进行了研究。研究了三个主要参数,包括沿翼身的压力分布、平均流向速度及其在三个不同下游平面上的均方根波动,其中两个在近场,一个在远场。结果表明,RANS 模型和 RANS-LES 混合模型能够预测翼身压力分布和马蹄涡(HSV)向下游移动的路径,且数值耗散可接受。研究发现,与实验相比,不同模型的精度更高,这取决于飞机的下游位置。增强壁面处理的重归一化组 k-epsilon 模型(RNG KE-EN)在近场范围内捕捉尾流特性的精度最高,而在更下游(远场),尺度自适应模拟(SAS)模型预测流场的精度最高,其次是 RNGKE-EN 模型。
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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Downstream wake features of a Rood wing predicted by different turbulence models

Computational fluid dynamics is used to analyze the influence of the horseshoe vortex on the wake features of a simplified geometry representing an underwater vehicle sail (i.e. Rood wing). The sail wake features are of interest as they influence the performance of the downstream components of an underwater vehicle such as the aft appendages and propeller. This paper uses the Rood wing, a generic wing body, mounted on a flat plate as its low aspect ratio is comparable to the underwater vehicle sail and there are substantial published experimental data for validation. Two main simulation schemes were adopted in this paper, i.e. the Reynolds-averaged Navier–Stokes (RANS) and hybrid RANS–large Eddy simulation (LES) incorporating several turbulence models. Both schemes were also examined in their ability to predict the downstream wake features as the literature available to date have primarily focused only on the near-field flow features around the wing root. Three main parameters were investigated including the pressure distribution along the wing’s body, the mean streamwise velocity, and its root mean square fluctuation at three different downstream planes, two in the near field and one in the far field. Results show that the RANS and the hybrid RANS–LES models are capable of predicting the wing-body pressure distribution and the paths of the horseshoe vortex (HSV) as it moves downstream with acceptable numerical dissipation. It was found that different models provided higher accuracy when compared to the experiment depending on the downstream location of the plane. The re-normalization group k-epsilon model with enhanced wall treatment (RNG KE-EN) model captured the wake properties with the highest accuracy within the near field, while further downstream (in the far field), the scale adaptive simulation (SAS) model predicted the flow field with the highest accuracy followed by the RNGKE-EN model.

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来源期刊
Journal of Marine Science and Technology
Journal of Marine Science and Technology 工程技术-工程:海洋
CiteScore
5.60
自引率
3.80%
发文量
47
审稿时长
7.5 months
期刊介绍: The Journal of Marine Science and Technology (JMST), presently indexed in EI and SCI Expanded, publishes original, high-quality, peer-reviewed research papers on marine studies including engineering, pure and applied science, and technology. The full text of the published papers is also made accessible at the JMST website to allow a rapid circulation.
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