Krylov Methods for Large Sparse Systems: A Comprehensive Overview

Authors

  • Amanda Zeqiri University of Tirana, Faculty of Natural Sciences, Department of Applied Mathematics, Albania
  • Arben Malko University of Tirana, Faculty of Natural Sciences, Department of Applied Mathematics, Albania

DOI:

https://doi.org/10.19044/esj.2021.v17n17p39

Keywords:

Krylov methods, numerical experiments, sparse linear systems, preconditioning

Abstract

In this paper are analyzed behavior and properties for different Krylov methods applied in different categories of problems. These categories often include PDEs, econometrics and network models, which are represented by large sparse systems. For our empirical analysis are taken into consideration size, the density of non-zero elements, symmetry/un-symmetry, eigenvalue distribution, also well/ill-conditioned and random systems. Convergence, approximation error and residuals are compared for the full version of methods, some restarted methods and preconditioned methods. Two preconditioners are considered respectively, ILU(0) and IC(0) by using at least five preconditioning techniques. In each case, empirical results show which technique is best to use based on properties of the system and are backed up by general theoretical information already found on Krylov space methods.

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Published

2021-05-31

How to Cite

Zeqiri, A., & Malko, A. (2021). Krylov Methods for Large Sparse Systems: A Comprehensive Overview. European Scientific Journal, ESJ, 17(17), 39. https://doi.org/10.19044/esj.2021.v17n17p39

Issue

Section

ESJ Natural/Life/Medical Sciences