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首页> 外文期刊>Journal of Scientific Computing >Optimized Schwarz Methods with Elliptical Domain Decompositions
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Optimized Schwarz Methods with Elliptical Domain Decompositions

机译:优化施瓦茨方法,具有椭圆域分解

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摘要

Over the past decade, partial differential equation models in elliptical geometries have become a focus of interest in several scientific and engineering applications: the classical studies of flow past a cylinder, the spherical particles in nano-fluids and spherical water filled domains are replaced by elliptical geometries which more accurately describe a wider class of physical problems of interest. Optimized Schwarz methods (OSMs) are among the best parallel methods for such models. We study here for the first time OSMs with elliptical domain decompositions, i.e. decompositions into an ellipse and elliptical rings. Using the technique of separation of variables, we decouple the spatial variables and reduce the subdomain problems to radial Mathieu like equations defined on finite intervals, which allows us to derive and study a new family of OSMs. Our analysis reveals that the optimized transmission parameters are not constants any more along the elliptical interfaces. We can prove however also that using the constant optimized parameters from the straight interface analysis in the literature scaled locally by the interface curvature is still efficient in an asymptotic sense, which leads to the important discovery of a unique factor in the optimized parameters and asymptotic performance determined by the geometry of the decomposition. We use numerical examples to illustrate our analysis and findings.
机译:在过去的十年中,椭圆形几何形状的部分微分方程模型已成为若干科学和工程应用中感兴趣的焦点:流过圆筒的流动的古典研究,纳米流体中的球形颗粒和球形填充结构域被椭圆形取代更准确地描述一个更广泛的感兴趣的身体问题的几何形状。优化的Schwarz方法(OSM)是这种模型的最佳平行方法之一。我们在这里研究具有椭圆域分解的第一次OSM,即分解成椭圆形和椭圆形环。使用变量的分离技术,我们将空间变量解耦并将子域问题减少到有限间隔内定义的径向Mathieu等方程式,这使我们能够派生和研究一个新的OSM系列。我们的分析表明,优化的传输参数沿椭圆接口不再常用。然而,我们还可以证明,在界面曲率下,使用来自在本地缩放的文献中的直接接口分析中的恒定优化参数仍然有效地呈现有效的渐近感,这导致了优化参数和渐近性能的独特因素的重要发现由分解的几何形状决定。我们使用数字示例来说明我们的分析和调查结果。

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