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Numerical solution of the parameterized steady-state Navier-Stokes equations using empirical interpolation methods

机译:经验插值法求解参数化稳态Navier-Stokes方程的数值解

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摘要

Reduced-order modeling is an efficient approach for solving parameterized discrete partial differential equations when the solution is needed at many parameter values. An offline step approximates the solution space and an online step utilizes this approximation, the reduced basis, to solve a smaller reduced problem at significantly lower cost, producing an accurate estimate of the solution. For nonlinear problems, however, standard methods do not achieve the desired cost savings. Empirical interpolation methods represent a modification of this methodology used for cases of nonlinear operators or nonaffine parameter dependence. These methods identify points in the discretization necessary for representing the nonlinear component of the reduced model accurately, and they incur online computational costs that are independent of N, the number of degrees of freedom of the discrete system. We will show that empirical interpolation methods can be used to significantly reduce the costs of solving parameterized versions of the Navier-Stokes equations, and that iterative solution methods can be used in place of direct methods to further reduce the costs of solving the algebraic systems arising from reduced-order models. (C) 2016 Elsevier B.V. All rights reserved.
机译:当需要在许多参数值上求解时,降阶建模是求解参数化离散偏微分方程的有效方法。离线步骤近似解决方案空间,而在线步骤则利用此近似值(简化后的基础)以显着较低的成本解决较小的简化问题,从而得出解决方案的准确估算值。但是,对于非线性问题,标准方法无法实现所需的成本节省。经验插值方法表示该方法的一种修改形式,用于非线性算子或非仿射参数相关性的情况。这些方法在离散化中标识了精确表示简化模型的非线性分量所必需的点,并且它们产生的在线计算成本与N(离散系统的自由度数)无关。我们将证明经验插值方法可用于显着降低求解Navier-Stokes方程的参数化版本的成本,并且迭代求解方法可用于代替直接方法以进一步降低求解所产生的代数系统的成本来自降阶模型。 (C)2016 Elsevier B.V.保留所有权利。

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