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Stochastic turbulence modeling in RANS simulations via multilevel Monte Carlo

机译:通过多级蒙特卡罗的Rans模拟中的随机湍流建模

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摘要

A multilevel Monte Carlo (MLMC) method for quantifying model-form uncertainties associated with the Reynolds-Averaged Navier-Stokes (RANS) simulations is presented. Two, high-dimensional, stochastic extensions of the RANS equations are considered to demonstrate the applicability of the MLMC method. The first approach is based on global perturbation of the baseline eddy viscosity field using a lognormal random field. A more general second extension is considered based on the work of [Xiao et al. (2017)], where the entire Reynolds Stress Tensor (RST) is perturbed while maintaining realizability. For two fundamental flows, we show that the MLMC method based on a hierarchy of meshes is asymptotically faster than plain Monte Carlo. Additionally, we demonstrate that for some flows an optimal multilevel estimator can be obtained for which the cost scales with the same order as a single CFD solve on the finest grid level. (C) 2019 Published by Elsevier Ltd.
机译:提出了一种用于量化与Reynolds平均Navier-Stokes(RANS)模拟相关的模型形式的不确定性的多级蒙特卡罗(MLMC)方法。 两种,rans方程的高尺寸随机延伸被认为是证明MLMC方法的适用性。 第一种方法是基于使用Lognormal随机场的基线涡粘度场的全局扰动。 根据[Xiao等人的工作,考虑更一般的第二延伸。 (2017)],在保持可实现性的同时扰乱整个雷诺应力张力(RST)。 对于两个基本流动,我们表明基于网格层次结构的MLMC方法比普通蒙特卡罗更快地渐近。 另外,我们证明,对于某些流程,可以获得最佳的多级估计器,其成本尺度具有与单个CFD在最佳电网级别相同的顺序。 (c)2019年由elestvier有限公司出版

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