In this paper we present an algebraic dimension-oblivious two-level domain decomposition solver for discretizations of elliptic partial differential equations. The proposed parallel solver is based on a space-filling curve partitioning approach that is applicable to any discretization, i.e. it directly operates on the assembled matrix equations. Moreover, it allows for the effective use of arbitrary processor numbers independent of the dimension of the underlying partial differential equation while maintaining optimal convergence behavior. This is the core property required to attain a sparse grid based combination method with extreme scalability which can utilize exascale parallel systems efficiently. Moreover, this approach provides a basis for the development of a fault-tolerant solver for the numerical treatment of high-dimensional problems. To achieve the required data redundancy we are therefore concerned with large overlaps of our domain decomposition which we construct via space-filling curves. In this paper, we propose our space-filling curve based domain decomposition solver and present its convergence properties and scaling behavior. The results of numerical experiments clearly show that our approach provides optimal convergence and scaling behavior in arbitrary dimension utilizing arbitrary processor numbers.
翻译:在本文中,我们为椭圆部分差异方程式的离散性提供了一个代数维度可见的两级域分解解解解解解码器。提议的平行解析器基于适用于任何离散性的空间填充曲线分割法,即它直接在组装矩阵方程式上运行。此外,它允许有效使用与基础部分差异方程式的维度无关的任意处理器数字,同时保持最佳的趋同行为。这是实现一个分散的基于网格的组合法所需的核心属性,该网格混合法可以有效地利用伸缩式平行系统。此外,这一方法为开发一个用于对高维度问题进行数字处理的容过分解解解码提供了基础。为了实现所需的数据冗余性,我们因此关心的是我们通过空间填充曲线构建的域分解作用的巨大重叠。在本文中,我们提出了基于空间填充曲线的域分解解解特性并展示其趋同特性和缩缩缩行为。数字实验的结果清楚地表明,我们的方法提供了利用任意处理的数字数字在任意层面的最佳趋同和缩行为。