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Performance of algebraic multigrid methods for non-symmetric matrices arising in particle methods

机译:代数多重网格方法在粒子方法中产生的非对称矩阵的性能

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Large linear systems with sparse, non-symmetric matrices are known to arise in the modeling of Markov chains or in the discretization of convection diffusion problems. Due to their potential of solving sparse linear systems with an effort that is linear in the number of unknowns, algebraic multigrid (AMG) methods are of fundamental interest for such systems. For symmetric positive definite matrices, fundamental theoretical convergence results are established, and efficient AMG solvers have been developed. In contrast, for non-symmetric matrices, theoretical convergence results have been provided only recently. A property that is sufficient for convergence is that the matrix be an M-matrix. In this paper, we present how the simulation of incompressible fluid flows with particle methods leads to large linear systems with sparse, non-symmetric matrices. In each time step, the Poisson equation is approximated by meshfree finite differences. While traditional least squares approaches do not guarantee an M-matrix structure, an approach based on linear optimization yields optimally sparse M-matrices. For both types of discretization approaches, we investigate the performance of a classical AMG method, as well as an algebraic multilevel iteration (AMLI) type method. While in the considered test problems, the M-matrix structure turns out not to be necessary for the convergence of AMG, problems can occur when it is violated. In addition, the matrices obtained by the linear optimization approach result in fast solution times due to their optimal sparsity.
机译:已知在马尔可夫链的建模或对流扩散问题的离散化中会出现具有稀疏,非对称矩阵的大型线性系统。由于其具有解决未知数线性问题的稀疏线性系统的潜力,因此代数多重网格(AMG)方法是此类系统的基本兴趣。对于对称正定矩阵,建立了基本的理论收敛结果,并且已经开发了有效的AMG求解器。相反,对于非对称矩阵,理论收敛结果只是最近才提供的。足以收敛的属性是矩阵是M矩阵。在本文中,我们介绍了使用粒子方法对不可压缩流体的模拟如何导致具有稀疏,非对称矩阵的大型线性系统。在每个时间步长中,泊松方程均由无网格的有限差分来近似。尽管传统的最小二乘法无法保证M矩阵结构,但基于线性优化的方法却可以产生最优的稀疏M矩阵。对于这两种离散化方法,我们都研究了经典AMG方法以及代数多级迭代(AMLI)类型方法的性能。虽然在考虑的测试问题中,事实证明M矩阵结构对于AMG的收敛不是必需的,但是如果违反了该规则,则会出现问题。另外,通过线性优化方法获得的矩阵由于具有最佳的稀疏性,因此可以缩短求解时间。

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