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A Leray regularized ensemble-proper orthogonal decomposition method for parameterized convection-dominated flows

机译:参数对流占优流的Leray正则化总体正正交分解方法

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摘要

Partial differential equations (PDEs) are often dependent on input quantities that are uncertain. To quantify this uncertainty PDEs must be solved over a large ensemble of parameters. Even for a single realization this can be a computationally intensive process. In the case of flows governed by the Navier-Stokes equations, an efficient method has been devised for computing an ensemble of solutions. To further reduce the computational cost of this method, an ensemble-proper orthogonal decomposition (POD) method was recently proposed. The main contribution of this work is the introduction of POD spatial filtering for ensemble-POD methods. The POD spatial filter makes possible the construction of the Leray ensemble-POD model, which is a regularized-reduced order model for the numerical simulation of convection-dominated flows of moderate Reynolds number. The Leray ensemble-POD model employs the POD spatial filter to smooth (regularize) the convection term in the Navier-Stokes equations, and diminishes the numerical inaccuracies produced by the ensemble-POD method in the numerical simulation of convection-dominated flows. Specifically, for the numerical simulation of a convection-dominated two-dimensional flow between two offset cylinders, we show that the Leray ensemble-POD method better reflects the dynamics of the benchmark results than the ensemble-POD scheme. The second contribution of this work is a new numerical discretization of the variable viscosity ensemble algorithm in which the average viscosity is replaced with the maximum viscosity. It is shown that this new numerical discretization is significantly more stable than those in current use. Furthermore, error estimates for the novel Leray ensemble-POD algorithm with this new numerical discretization are also proven.
机译:偏微分方程(PDE)通常取决于不确定的输入量。为了量化这种不确定性,必须在大量参数上求解PDE。即使对于单个实现,这也可能是计算密集的过程。对于由Navier-Stokes方程控制的流量,已设计出一种有效的方法来计算整体解。为了进一步降低该方法的计算成本,最近提出了一种合宜的正交分解(POD)方法。这项工作的主要贡献是为集成POD方法引入了POD空间过滤。 POD空间滤波器使构建Leray ensemble-POD模型成为可能,该模型是用于对中雷诺数对流占主导的流动进行数值模拟的正则化降阶模型。 Leray整体POD模型采用POD空间滤波器对Navier-Stokes方程中的对流项进行平滑处理(正则化),并减少了整体POD方法在对流主导流的数值模拟中产生的数值误差。具体来说,对于两个偏移圆柱之间对流主导的二维流动的数值模拟,我们表明,Leray集合POD方法比集合POD方案更好地反映了基准结果的动态。这项工作的第二个贡献是可变粘度集成算法的新数值离散化,其中平均粘度被最大粘度代替。结果表明,这种新的数值离散比当前使用的数字离散要稳定得多。此外,还证明了使用这种新的数值离散化的新型Leray ensemble-POD算法的误差估计。

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