Conditioning of linear systems arising from penalty methods

06/14/2022
by   William Layton, et al.
0

Penalizing incompressibility in the Stokes problem leads, under mild assumptions, to matrices with condition numbers κ =𝒪 (ε ^-1h^-2), ε = penalty parameter <<1, and h= mesh width <1. Although κ =𝒪(ε ^-1h^-2) is large, practical tests seldom report difficulty in solving these systems. In the SPD case, using the conjugate gradient method, this is usually explained by spectral gaps occurring in the penalized coefficient matrix. Herein we point out a second contributing factor. Since the solution is approximately incompressible, solution components in the eigenspaces associated with the penalty terms can be small. As a result, the effective condition number can be much smaller than the standard condition number.

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