Gazi Alam: Fast iterative solution of large scale statistical inverse problem
Tid: Fr 2013-04-26 kl 11.00
Plats: Room 32, building 5, Kräftriket, Department of mathematics, Stockholm university
We consider a large scale statistical inverse problem governed by a three dimensional parabolic partial differential equation within the framework of Bayesian inference with Gaussian noise and prior probability densities. The problem is formulated as a PDE constrained optimization problem. In addition to spectrally neutral prior, we consider 2nd and 4th order Gaussian smoothness prior with both Dirichlet and Neumann boundary conditions. In this thesis we apply a preconditioned Krylov subspace method focusing on the fast solution of the linear systems in saddle point form. The preconditioner is of block diagonal form that involves the effective approximation of the Schur complement. We present the numerical experiments illustrating the performance of the preconditioners and the effects of the regularization parameter for both noise and prior terms.
