Authors
James Brannick, Fei Cao, Karsten Kahl, Robert D Falgout, Xiaozhe Hu
Publication date
2018
Journal
SIAM Journal on Scientific Computing
Volume
40
Issue
3
Pages
A1473-A1493
Publisher
Society for Industrial and Applied Mathematics
Description
In this paper, we consider a classical algebraic multigrid (AMG) form of optimal interpolation that directly minimizes the two-grid convergence rate and compare it with a so-called ideal interpolation that minimizes a weak approximation property of the coarse space. We study compatible relaxation type estimates for the quality of the coarse grid and derive a new sharp measure using optimal interpolation that provides a guaranteed lower bound on the convergence rate of the resulting two-grid method for a given grid. In addition, we design a generalized bootstrap AMG setup algorithm that computes a sparse approximation to the optimal interpolation matrix. We demonstrate numerically that the bootstrap AMG method with sparse interpolation matrix (and spanning multiple levels) converges faster than the two-grid method with the standard ideal interpolation (a dense matrix) for various scalar diffusion problems …
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Scholar articles
J Brannick, F Cao, K Kahl, RD Falgout, X Hu - SIAM Journal on Scientific Computing, 2018