Augmented Block-Arnoldi Recycling CFD Solvers

01/23/2023
by   Stephen Thomas, et al.
0

One of the limitations of recycled GCRO methods is the large amount of computation required to orthogonalize the basis vectors of the newly generated Krylov subspace for the approximate solution when combined with those of the recycle subspace. Recent advancements in low synchronization Gram-Schmidt and generalized minimal residual algorithms, Swirydowicz et al. <cit.>, Carson et al. <cit.>, and Lund <cit.>, can be incorporated, thereby mitigating the loss of orthogonality of the basis vectors. An augmented Arnoldi formulation of recycling leads to a matrix decomposition and the associated algorithm can also be viewed as a block Krylov method. Generalizations of both classical and modified block Gram-Schmidt algorithms have been proposed, Carson et al. <cit.>. Here, an inverse compact WY modified Gram-Schmidt algorithm is applied for the inter-block orthogonalization scheme with a block lower triangular correction matrix T_k at iteration k. When combined with a weighted (oblique inner product) projection step, the inverse compact WY scheme leads to significant (over 10× in certain cases) reductions in the number of solver iterations per linear system. The weight is also interpreted in terms of the angle between restart residuals in LGMRES, as defined by Baker et al.<cit.>. In many cases, the recycle subspace eigen-spectrum can substitute for a preconditioner.

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