Accuracy and efficiency considerations in the solution of extremely large electromagnetics problems

L. Gurel, O. Ergul
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Abstract

This study considers fast and accurate solutions of extremely large electromagnetics problems. Surface formulations of large-scale objects lead to dense matrix equations involving millions of unknowns. Thanks to recent developments in parallel algorithms and high-performance computers, these problems can easily be solved with unprecedented levels of accuracy and detail. For example, using a parallel implementation of the multilevel fast multipole algorithm (MLFMA), we are able to solve electromagnetics problems discretized with hundreds of millions of unknowns. Unfortunately, as the problem size grows, it becomes difficult to assess the accuracy and efficiency of the solutions, especially when comparing different implementations. This paper presents our efforts to solve extremely large electromagnetics problems with an emphasis on accuracy and efficiency. We present a list of benchmark problems, which can be used to compare different implementations for large-scale problems.
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求解特大电磁学问题时的精度和效率考虑
本研究考虑了超大型电磁学问题的快速和准确的解决方案。大尺度物体的表面公式导致涉及数百万未知数的密集矩阵方程。由于并行算法和高性能计算机的最新发展,这些问题可以以前所未有的精度和细节轻松解决。例如,使用多层快速多极算法(MLFMA)的并行实现,我们能够解决具有数亿未知数的离散电磁学问题。不幸的是,随着问题规模的增长,评估解决方案的准确性和效率变得越来越困难,尤其是在比较不同实现时。本文介绍了我们在解决特大电磁学问题上的努力,重点是精度和效率。我们提供了一个基准问题列表,可用于比较大规模问题的不同实现。
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