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Resolution and Energy Dissipation Characteristics of Implicit LES and Explicit Filtering Models for Compressible Turbulence

机译:可压缩湍流隐式LES的分辨率和耗能特性及显式过滤模型

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Solving two-dimensional compressible turbulence problems up to a resolution of 16, 384^2, this paper investigates the characteristics of two promising computational approaches: (i) an implicit or numerical large eddy simulation (ILES) framework using an upwind-biased fifth-order weighted essentially non-oscillatory (WENO) reconstruction algorithm equipped with several Riemann solvers, and (ii) a central sixth-order reconstruction framework combined with various linear and nonlinear explicit low-pass spatial filtering processes. Our primary aim is to quantify the dissipative behavior, resolution characteristics, shock capturing ability and computational expenditure for each approach utilizing a systematic analysis with respect to its modeling parameters or parameterizations. The relative advantages and disadvantages of both approaches are addressed for solving a stratified Kelvin-Helmholtz instability shear layer problem as well as a canonical Riemann problem with the interaction of four shocks. The comparisons are both qualitative and quantitative, using visualizations of the spatial structure of the flow and energy spectra, respectively. We observe that the central scheme, with relaxation filtering, offers a competitive approach to ILES and is much more computationally efficient than WENO-based schemes.
机译:为了解决分辨率高达16、384 ^ 2的二维可压缩湍流问题,本文研究了两种有前途的计算方法的特点:(i)使用逆风偏向第五个隐式或数值大涡模拟(ILES)框架。阶加权基本非振荡(WENO)重构算法,配备了多个Riemann求解器,以及(ii)结合了各种线性和非线性显式低通空间滤波过程的中央六阶重构框架。我们的主要目标是针对每种方法的建模参数或参数化进行系统分析,以量化每种方法的耗散行为,分辨率特性,震动捕捉能力和计算支出。两种方法的相对优缺点都针对解决分层的Kelvin-Helmholtz不稳定性剪切层问题以及具有四个冲击相互作用的典范Riemann问题。比较分别是定性的和定量的,分别使用流动和能量谱的空间结构的可视化。我们观察到,采用松弛过滤的中央方案为ILES提供了一种竞争方法,并且比基于WENO的方案在计算效率上要高得多。

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