基于统计和机器学习技术的大涡模拟研究

Mohammed Khalid Hossen
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摘要

Navier-Stokes (N-S)方程的数值解在其发展过程中,特别是近年来,已被发现在各个学科中都很有用。然而,一种通过闭合Navier-Stokes方程来模拟亚网格尺度耗散率的大涡模拟方法已经被开发出来。通过大涡模拟研究了亚网格尺度湍流动能和耗散的瞬时和时均统计特性。本研究的目的是检验亚网格尺度能量耗散的统计和机器学习。我们知道,目前的湍流理论认为涡旋拉伸机制将能量从大尺度传递到小尺度,并导致湍流中能量耗散率高。因此,考虑基于速度梯度平方的涡旋拉伸亚网格尺度模型来检测涡旋拉伸机制的作用。本文的研究过程分为两步。通过高阶统计量和联合概率密度函数分析了速度梯度的后验统计量。其次,在相同的数据上研究了机器学习方法。然后,将基于涡旋拉伸的子网格尺度模型与其他两种动态子网格模型,如局域动态动能方程模型和基于tke的Deardorff模型进行了比较。结果表明,基于涡旋拉伸的模型可以检测到小尺度运动的显著亚网格尺度耗散,并预测出令人满意的速度梯度张量湍流统计量。
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A Study of Large-eddy Simulation using Statistical and Machine Learning Techniques
The numerical solution of Navier-Stokes (N-S) equations has been found useful in various disciplines during its development, especially in recent years. However, a large-eddy simulation method has been developed to model the subgrid-scale dissipation rate by closing the Navier-Stokes equations. Because the instantaneous and time-averaged statistic characteristics of the subgrid-scale turbulent kinetic energy and dissipation have been studied by large eddy simulation. The purpose of this study is to check the statistical and machine learning of the subgrid-scale energy dissipation. As we know that the current turbulence theory states that the vortex stretching mechanism transports energy from large to small scales and leads to a high energy dissipation rate in a turbulent flow. Hence, a vortex-stretching-based subgrid-scale model is considered regarding the square of the velocity gradient to detect the playing role of the vortex stretching mechanism. The study in this article has shown a two-step process. Considering a posteriori statistic of the velocity gradient is analyzed through higher-order statistics and joint probability density function. Secondly, a machine learning approach is studied on the same data. The results of the vortex-stretching-based subgrid-scale model are then compared with the other two dynamic subgrid models, such as the localized dynamic kinetic energy equation model and the TKE-based Deardorff model. The results suggest that the vortex-stretching-based model can detect the significant subgrid-scale dissipation of small-scale motions and predict satisfactory turbulence statistics of the velocity gradient tensor.
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