Efficient Multigrid Algorithms for Three-Dimensional Electromagnetic Forward Modeling

IF 4.9 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Yongfei Wang, Jianxin Liu, Rongwen Guo
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引用次数: 0

Abstract

Multigrid (MG) methods solve large linear equations on fine grids by projecting them onto progressively coarser grids, on which the problem can be solved more cheaply. They have become among the most effective and prospective solvers for large linear systems. However, due to the abundant null solution space and the inclusion of the air layer, traditional MG methods struggle to converge in three-dimensional (3D) electromagnetic (EM) numerical forward modeling. Served as one major contribution of this review, we provide a complete review on strategies, introduced in recent decades to develop efficient MG algorithms for EM forward modeling. We focus on how these strategies handle the convergence difficulties encountered in EM numerical forward modeling. Another observation is that most state-of-the-art MG solvers have been developed and examined against traditional Krylov subspace iterative solvers, but there is little knowledge on the numerical performance of different strategies. Therefore, another primary contribution of this work is to provide a complete review of the numerical performance of different strategies used in MG solvers for 3D EM forward modeling in geophysical applications. For this purpose, firstly, we briefly introduce on finite difference and finite element numerical discretization of the electrical field partial differential equations to demonstrate why EM forward modeling is challenging to solve. Subsequently, some background information on MG methods is provided to show how they can be implemented in general. Then, different strategies used in different MG methods are introduced in great detail to address the convergence issues encountered in EM forward modeling in geophysical applications, caused by the abundant null solution space and the inclusion of the air layer. Finally, we present four newly developed MG algorithms and compare their overall numerical performance in terms of their parallel ability, stability, efficiency and memory cost by using two increasingly complex models. Since one major motivation for improving the EM forward modeling efficiency is to speed up the inversion process, their perspective of efficiency improvement in EM inversions has been discussed. On this basis, authors and researchers can choose one particular MG solver for their own EM forward modeling problems.

用于三维电磁前向建模的高效多网格算法
多网格(MG)方法是在精细网格上求解大型线性方程,将其投影到逐渐粗糙的网格上,这样求解问题的成本更低。它们已成为大型线性系统最有效和最有前途的求解器之一。然而,由于存在大量的零解空间和空气层,传统的电磁正演方法在三维电磁数值模拟中难以收敛。作为本综述的主要贡献之一,我们对近几十年来为EM正演建模开发高效MG算法的策略进行了全面回顾。我们关注这些策略如何处理电磁数值正演模拟中遇到的收敛困难。另一个观察结果是,大多数最先进的MG求解器已经开发出来,并针对传统的Krylov子空间迭代求解器进行了测试,但对不同策略的数值性能知之甚少。因此,这项工作的另一个主要贡献是对地球物理应用中用于三维电磁正演模拟的MG求解器中使用的不同策略的数值性能进行了完整的回顾。为此,首先,我们简要介绍了电场偏微分方程的有限差分和有限元数值离散,以说明为什么电磁正演建模具有挑战性。随后,提供了一些关于MG方法的背景信息,以说明如何在一般情况下实现它们。然后,详细介绍了不同MG方法中使用的不同策略,以解决地球物理应用中由于丰富的零解空间和包含空气层而导致的EM正演模拟的收敛问题。最后,我们提出了四种新开发的MG算法,并通过使用两个日益复杂的模型,比较了它们在并行能力、稳定性、效率和内存成本方面的总体数值性能。由于提高电磁正演模拟效率的一个主要动机是加快反演过程,因此讨论了他们对电磁反演效率提高的看法。在此基础上,作者和研究人员可以为自己的EM正演建模问题选择一个特定的MG求解器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Surveys in Geophysics
Surveys in Geophysics 地学-地球化学与地球物理
CiteScore
10.00
自引率
10.90%
发文量
64
审稿时长
4.5 months
期刊介绍: Surveys in Geophysics publishes refereed review articles on the physical, chemical and biological processes occurring within the Earth, on its surface, in its atmosphere and in the near-Earth space environment, including relations with other bodies in the solar system. Observations, their interpretation, theory and modelling are covered in papers dealing with any of the Earth and space sciences.
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