Back to Search Start Over

Evolutionary Algorithms for Location Area Management.

Authors :
Rothlauf, Franz
Branke, Jürgen
Cagnoni, Stefano
Corne, David W.
Drechsler, Rolf
Jin, Yaochu
Machado, Penousal
Marchiori, Elena
Romero, Juan
Smith, George D.
Squillero, Giovanni
Karaoğlu, Bahar
Topçuoğlu, Haluk
Gürgen, Fikret
Source :
Applications on Evolutionary Computing; 2005, p175-184, 10p
Publication Year :
2005

Abstract

Location area (LA) management is a very important problem in mobile networks. In general, registration and paging costs are associated with tracking the current location of a mobile user. Considering minimizing the total of paging and registration costs as the main objective, the aim is to provide corresponding cell-to-switch and cell-to-LA assignments. This paper compares three well-known evolutionary algorithms to measure their suitability for solving location area management problems; these are genetic algorithms, multi-population genetic algorithms and memetic algorithms. To handle multiple objectives of paging and registration, a two-stage multi-population GA is developed. A memetic algorithm is introduced in order to improve the performance of a GA with the local search techniques. The effectiveness of these methods is shown for a number of test problems with different network size and characteristics. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISBNs :
9783540253969
Database :
Supplemental Index
Journal :
Applications on Evolutionary Computing
Publication Type :
Book
Accession number :
32992196