arXiv Analytics

Sign in

arXiv:2209.02815 [math.NA]AbstractReferencesReviewsResources

Efficient solution of parameter identification problems with $H^1$ regularization

Jan Blechta, Oliver G. Ernst

Published 2022-09-06Version 1

We consider the identification of spatially distributed parameters under $H^1$ regularization. Solving the associated minimization problem by Gauss-Newton iteration results in linearized problems to be solved in each step that can be cast as boundary value problems involving a low-rank modification of the Laplacian. Using algebraic multigrid as a fast Laplace solver, the Sherman-Morrison-Woodbury formula can be employed to construct a preconditioner for these linear problems which exhibits excellent scaling w.r.t. the relevant problem parameters. We first develop this approach in the functional setting, thus obtaining a consistent methodology for selecting boundary conditions that arise from the $H^1$ regularization. We then construct a method for solving the discrete linear systems based on combining any fast Poisson solver with the Woodbury formula. The efficacy of this method is then demonstrated with scaling experiments. These are carried out for a common nonlinear parameter identification problem arising in electrical resistivity tomography.

Related articles: Most relevant | Search more
arXiv:2102.08330 [math.NA] (Published 2021-02-16)
Geometric modeling and regularization of algebraic problems
arXiv:2405.06337 [math.NA] (Published 2024-05-10)
Regularization with optimal space-time priors
arXiv:2312.08201 [math.NA] (Published 2023-12-13)
Efficient solution of sequences of parametrized Lyapunov equations with applications