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1 Marijn Bartel Schreuders Supervisor: Dr. Ir. M.B. Van Gijzen Date:Monday, 24 February 2014.

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Presentation on theme: "1 Marijn Bartel Schreuders Supervisor: Dr. Ir. M.B. Van Gijzen Date:Monday, 24 February 2014."— Presentation transcript:

1 1 Marijn Bartel Schreuders Supervisor: Dr. Ir. M.B. Van Gijzen Date:Monday, 24 February 2014

2 2 Overview of this presentation

3 3 Iterative methods

4 4 Projection methods Subspaces

5 5 Projection methods Definition

6 6

7 7 Projection methods General algorithm How to choose the subspaces?

8 8 Krylov subspace methods General

9 9 Krylov subspace methods Overview

10 10 Krylov subspace methods Overview

11 11 Krylov subspace methods Eigenvalue problems Computing all eigenvalues can be costly A is a full matrix A is large Idea: find smaller matrix for which it is easy to compute ‘Ritz values’ Good approximations to some of the eigenvalues of A

12 12 Krylov subspace methods Overview

13 13 Krylov subspace methods Overview

14 14 Krylov subspace methods Symmetric matrices Conjugate Gradient method (CG) Optimality condition Uses short recurrences Minimises the residual

15 15 Krylov subspace methods Nonsymmetric matrices GMRES-type methods Long recurrences Minimisation of the residual Bi-CG – type methods Short recurrences No minimisation of the residual Two matrix-vector operations per iteration Are their any other possibilities?

16 16 Induced Dimension Reduction (s)

17 17 Induced Dimension Reduction (s) IDR theorem

18 18 Induced Dimension Reduction (s) Numerical experiments

19 19 Induced Dimension Reduction (s) Numerical experiments This is an example of a slide

20 20 Induced Dimension Reduction (s) Numerical experiments

21 21 Induced Dimension Reduction (s) Numerical experiments This is an example of a slide

22 22 Induced Dimension Reduction (s) Numerical experiments This is an example of a slide

23 23

24 24 Induced Dimension Reduction (s) Ritz-IDR

25 25 Research goals

26 26 Marijn Bartel Schreuders Supervisor: Dr. Ir. M.B. Van Gijzen Date:Monday, 24 February 2014

27 27

28 28 Research goals

29 29 Krylov subspace methods Eigenvalue problems Arnoldi Method Lanczos method & Bi-Lanczos method


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