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A robust adaptive algebraic multigrid linear solver for structural mechanics

机译:用于结构力学的鲁棒自适应代数多重线性求解器

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The numerical simulation of structural mechanics applications via finite elements usually requires the solution of large-size linear systems, especially when accurate results are sought for derived variables, like stress or deformation fields. Such a task represents the most time-consuming kernel, and motivates the development of robust and efficient linear solvers for these applications. On the one hand, direct solvers are robust and easy to use, but their computational complexity in the best scenario is superlinear, which limits applicability according to the problem size. On the other hand, iterative solvers, in particular those based on algebraic multigrid (AMG) preconditioners, can reach up to linear complexity, but require more knowledge from the user for an efficient setup, and convergence is not always guaranteed, especially in ill-conditioned problems. In this work, we present a novel AMG method specifically tailored for ill-conditioned structural problems. It is characterized by an adaptive factored sparse approximate inverse (aFSAI) method as smoother, an improved least-squared based prolongation (DPLS) and a method for uncovering the near-null space that takes advantage of an already existing approximation. The resulting linear solver has been applied in the solution of challenging linear systems arising from real-world linear elastic structural problems. Numerical experiments prove the efficiency and robustness of the method and show how, in several cases, the proposed algorithm outperforms state-of-the-art AMG linear solvers. Even more important, the results show how the proposed method gives good results even assuming a default setup, making it fully adoptable also for non-expert users and commercial software. (C) 2019 Elsevier B.Y. All rights reserved.
机译:通过有限元件的结构力学应用的数值模拟通常需要大尺寸线性系统的解决方案,尤其是当寻求准确的结果来衍生的变量,如压力或变形场。这种任务代表了最耗时的内核,并激励了这些应用的强大和有效的线性求解器的开发。一方面,直接求解器是坚固且易于使用的,但它们在最佳场景中的计算复杂性是超级线性,这限制了根据问题尺寸的适用性。另一方面,迭代求解器,特别是基于代数Multigrid(AMG)预处理器的求解器可以达到线性复杂性,但需要更多来自用户的知识以获得有效的设置,并且并不总是保证收敛,尤其是ILL-条件问题。在这项工作中,我们提出了一种专门针对不良结构问题的新型AMG方法。它的特征在于一种自适应的因子稀疏近似逆(AFSAI)方法,作为更平滑的,改进的基于比分的基于分支的延长(DPLS)和用于揭示利用已经存在的近似的近空空间的方法。所得到的线性求解器已应用于真实世界线性弹性结构问题引起的挑战线性系统的解决方案。数值实验证明了该方法的效率和稳健性,并展示了如何在几种情况下,所提出的算法优于最先进的AMG线性溶剂。更重要的是,结果表明,即使假设默认设置,该方法如何提供良好的结果,也可以完全可接受非专家用户和商业软件。 (c)2019年Elsevier B.Y.版权所有。

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