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Reduced-order models for parameter dependent geometries based on shape sensitivity analysis

机译:基于形状敏感性分析的参数依赖几何的降阶模型

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The proper orthogonal decomposition (POD) is widely used to derive low-dimensional models of large and complex systems. One of the main drawback of this method, however, is that it is based on reference data. When they are obtained for one single set of parameter values, the resulting model can reproduce the reference dynamics very accurately but generally lack of robustness away from the reference state. It is therefore crucial to enlarge the validity range of these models beyond the parameter values for which they were derived. This paper presents two strategies based on shape sensitivity analysis to partially address this limitation of the POD for parameters that define the geometry of the problem at hand (design or shape parameters.) We first detail the methodology to compute both the POD modes and their Lagrangian sensitivities with respect to shape parameters. From them, we derive improved reduced-order bases to approximate a class of solutions over a range of parameter values. Secondly, we demonstrate the efficiency and limitations of these approaches on two typical flow problems: (1) the one-dimensional Burgers' equation; (2) the two-dimensional flows past a square cylinder over a range of incidence angles.
机译:适当的正交分解(POD)被广泛用于导出大型和复杂系统的低维模型。但是,该方法的主要缺点之一是它基于参考数据。当为一组单一的参数值获得它们时,所得模型可以非常准确地重现参考动力学,但通常缺乏远离参考状态的鲁棒性。因此,至关重要的是,将这些模型的有效性范围扩大到其衍生参数值之外。本文提出了两种基于形状敏感性分析的策略,以部分解决POD的局限性,这些局限性用于定义当前问题的几何形状的参数(设计或形状参数)。我们首先详细介绍计算POD模式及其拉格朗日方法的方法关于形状参数的敏感性。从它们中,我们得出改进的降阶基,以在一系列参数值上近似求解类。其次,我们证明了这些方法在两个典型的流动问题上的有效性和局限性:(1)一维伯格斯方程; (2)二维流在一定入射角范围内流过一个方形圆柱体。

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