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首页> 外文期刊>Bulletin of the American Physical Society >APS -70th Annual Meeting of the APS Division of Fluid Dynamics- Event - Inner-outer predictive wall model for wall-bounded turbulence in hypersonic flow
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APS -70th Annual Meeting of the APS Division of Fluid Dynamics- Event - Inner-outer predictive wall model for wall-bounded turbulence in hypersonic flow

机译:APS-APS流体动力学分部第70届年会-事件-高超音速流中壁边界湍流的内外预测壁模型

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The inner-outer predictive wall model of Mathis et al. (JFM 2011) is modified for hypersonic turbulent boundary layers. The model is based on a modulation of the energized motions in the inner layer by large scale momentum fluctuations in the logarithmic layer. Using direct numerical simulation (DNS) data of turbulent boundary layers with free stream Mach number 3 to 10, it is shown that the variation of the fluid properties in the compressible flows leads to large Reynolds number (Re) effects in the outer layer and facilitate the modulation observed in high Re incompressible flows. The modulation effect by the large scale increases with increasing free-stream Mach number. The model is extended to include spanwise and wall-normal velocity fluctuations and is generalized through Morkovin scaling. Temperature fluctuations are modeled using an appropriate Reynolds Analogy. Density fluctuations are calculated using an equation of state and a scaling with Mach number. DNS data are used to obtain the universal signal and parameters. The model is tested by using the universal signal to reproduce the flow conditions of Mach 3 and Mach 7 turbulent boundary layer DNS data and comparing turbulence statistics between the modeled flow and the DNS data.
机译:Mathis等人的内外预测墙模型。 (JFM 2011)已针对高超声速湍流边界层进行了修改。该模型基于对数层中大规模动量波动对内层中激励运动的调制。使用自由流马赫数为3到10的湍流边界层的直接数值模拟(DNS)数据,表明可压缩流中的流体特性变化会导致外层的雷诺数(Re)效应较大,并有助于在高Re不可压缩流中观察到的调制。随着自由流马赫数的增加,大规模的调制效果也随之增加。该模型已扩展为包括翼展方向和壁法向速度波动,并通过Morkovin缩放进行了概括。使用适当的雷诺类比对温度波动进行建模。使用状态方程和马赫数比例来计算密度波动。 DNS数据用于获取通用信号和参数。通过使用通用信号重现Mach 3和Mach 7湍流边界层DNS数据的流动条件,并比较建模流量和DNS数据之间的湍流统计数据,对模型进行测试。

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