Publication Date:
2000
abstract:
The problem of approximating the solution of infinite linear systems finitely expressed by
a sparse coefficient matrix in block Hessenberg form is considered. The convergence of the
solutions of a sequence of truncated problems to the infinite problem solution is investigated.
A family of algorithms, some of which are adaptive, is introduced, based on the application
of the Gauss-Seidel method to a sequence of truncated problems of increasing size
$n_i$ with non-increasing tolerance $10^{-t_i}$. These algorithms do not require special structural properties
of the coefficient matrix and they differ in the way the sequences $n_i$ and $t_i$ are generated.
The testing has been performed on both infinite problems arising from the discretization of
elliptical equations on unbounded domains and stochastic problems arising from queueing
theory. Extensive numerical experiments permit the evaluation of the various strategies and
suggest that the best trade-off between accuracy and computational cost is reached by some
of the adaptive algorithms.
Iris type:
01.01 Articolo in rivista
Keywords:
Infinite linear systems; Iterative methods
List of contributors:
Favati, Paola
Published in: