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Ideal stochastic forcing for the motion of particles in large-eddy simulation extracted from direct numerical simulation of turbulent channel flow

机译:从湍流通道直接数值模拟中提取的大涡模拟中粒子运动的理想随机强迫

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摘要

The motion of small particles in turbulent conditions is influenced by the entire range of length- and time-scales of the flow. At high Reynolds numbers this range of scales is too broad for direct numerical simulation (DNS). Such flows can only be approached using large-eddy simulation (LES), which requires the introduction of a sub-filter model for the momentum dynamics. Likewise, for the particle motion the effect of sub-filter scales needs to be reconstructed approximately, as there is no explicit access to turbulent sub-filter scales. To recover the dynamic consequences of the unresolved scales, partial reconstruction through approximate deconvolution of the LES-filter is combined with explicit stochastic forcing in the equations of motion of the particles. We analyze DNS of high-Reynolds turbulent channel flow to a priori extract the ideal forcing that should be added to retain correct statistical properties of the dispersed particle phase in LES. The probability density function of the velocity differences that need to be included in the particle equations and their temporal correlation display a striking and simple structure with little dependence on Reynolds number and particle inertia, provided the differences are normalized by their RMS, and the correlations expressed in wall units. This is key to the development of a general "stand-alone" stochastic forcing for inertial particles in LES.
机译:在湍流条件下小颗粒的运动受流动的整个长度和时间尺度范围的影响。在高雷诺数下,该比例范围对于直接数值模拟(DNS)而言太宽。只能使用大涡模拟(LES)来处理此类流,这需要为动量动力学引入子过滤器模型。同样,对于粒子运动,由于没有显式访问湍流子过滤器标尺,因此需要大致重构子过滤器标尺的效果。为了恢复未解决尺度的动态结果,将通过LES滤波器的近似反卷积进行的局部重构与粒子运动方程中的显式随机强迫相结合。我们分析高雷诺湍流通道的DNS,以先验地提取理想的强迫,应该添加这种强迫以保留LES中分散颗粒相的正确统计特性。粒子方程中需要包含的速度差的概率密度函数及其时间相关性显示出醒目的简单结构,几乎不依赖雷诺数和粒子惯性,但前提是通过均方根值对其进行归一化,并表示出相关性以墙为单位。这是开发LES中惯性粒子的一般“独立”随机强迫的关键。

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