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arxiv: 1512.05820 · v2 · pith:YYQ4XVCUnew · submitted 2015-12-17 · 🧮 math.NA · cs.NA

Krylov-subspace recycling via the POD-augmented conjugate-gradient method

classification 🧮 math.NA cs.NA
keywords methodrecyclingkrylov-subspaceproposesubspacecomputegoal-orientedlow-dimensional
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This work presents a new Krylov-subspace-recycling method for efficiently solving sequences of linear systems of equations characterized by varying right-hand sides and symmetric-positive-definite matrices. As opposed to typical truncation strategies used in recycling such as deflation, we propose a truncation method inspired by goal-oriented proper orthogonal decomposition (POD) from model reduction. This idea is based on the observation that model reduction aims to compute a low-dimensional subspace that contains an accurate solution; as such, we expect the proposed method to generate a low-dimensional subspace that is well suited for computing solutions that can satisfy inexact tolerances. In particular, we propose specific goal-oriented POD `ingredients' that align the optimality properties of POD with the objective of Krylov-subspace recycling. To compute solutions in the resulting `augmented' POD subspace, we propose a hybrid direct/iterative three-stage method that leverages 1) the optimal ordering of POD basis vectors, and 2) well-conditioned reduced matrices. Numerical experiments performed on solid-mechanics problems highlight te benefits of the proposed method over existing approaches for Krylov-subspace recycling.

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