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A parallel shared-memory implementation of a high-order accurate solution technique for variable coefficient Helmholtz problems

机译:可变系数亥姆霍兹问题的高阶精确解技术的并行共享内存实现

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摘要

The recently developed Hierarchical Poincare-Steklov (HPS) method is a high-order discretization technique that comes with a direct solver. Results from previous papers demonstrate the method's ability to solve Helmholtz problems to high accuracy without the so-called pollution effect. While the asymptotic scaling of the direct solver's computational cost is the same as the nested dissection method, serial implementations of the solution technique are not practical for large scale numerical simulations. This manuscript presents the first parallel implementation of the HPS method. Specifically, we introduce an approach for a shared memory implementation of the solution technique utilizing parallel linear algebra. This approach is the foundation for future large scale simulations on supercomputers and clusters with large memory nodes. Performance results on a desktop computer (resembling a large memory node) are presented. (C) 2019 Elsevier Ltd. All rights reserved.
机译:最近开发的Hierarchical Poincare-Steklov(HPS)方法是一种直接求解器附带的高阶离散化技术。先前论文的结果证明了该方法能够以高精度解决亥姆霍兹问题,而没有所谓的污染效应。尽管直接求解器的计算成本的渐近缩放与嵌套解剖方法相同,但是该解决方案技术的串行实现不适用于大规模数值模拟。该手稿介绍了HPS方法的第一个并行实现。具体来说,我们介绍一种使用并行线性代数的解决方案技术的共享内存实现方法。这种方法是将来在具有大内存节点的超级计算机和集群上进行大规模仿真的基础。给出了台式计算机(类似于大内存节点)上的性能结果。 (C)2019 Elsevier Ltd.保留所有权利。

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