非均质椭圆问题的可扩展域分解预处理

P. Jolivet, F. Hecht, F. Nataf, C. Prud'homme
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引用次数: 75

摘要

区域分解方法与多网格方法是当代大规模偏微分方程模拟的主要方法之一。在本文中,在重叠方法的背景下,提出了一个理论上和数值上可扩展的预调节器的轻量级实现。这项工作的性能通过在数千个核心上执行的数值模拟来评估,用于解决具有数十亿自由度的2D和3D各种高度非均质椭圆问题。这类问题出现在计算科学和工程、固体和流体力学中。虽然专注于重叠域分解方法可能看起来过于限制,但它将显示这项工作如何应用于各种其他方法,例如非重叠方法和基于抽象紧缩的前置条件。本文还介绍了如何使用多级预调节器来避免在迭代过程中通信,如Krylov方法。
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Scalable domain decomposition preconditioners for heterogeneous elliptic problems
Domain decomposition methods are, alongside multigrid methods, one of the dominant paradigms in contemporary large-scale partial differential equation simulation. In this paper, a lightweight implementation of a theoretically and numerically scalable preconditioner is presented in the context of overlapping methods. The performance of this work is assessed by numerical simulations executed on thousands of cores, for solving various highly heterogeneous elliptic problems in both 2D and 3D with billions of degrees of freedom. Such problems arise in computational science and engineering, in solid and fluid mechanics. While focusing on overlapping domain decomposition methods might seem too restrictive, it will be shown how this work can be applied to a variety of other methods, such as non-overlapping methods and abstract deflation based preconditioners. It is also presented how multilevel preconditioners can be used to avoid communication during an iterative process such as a Krylov method.
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