Gespeichert in:
Bibliographische Detailangaben
1. Verfasser: Reza Roshani
Format: Artículo científico
Sprache:en
Veröffentlicht: Universidade Federal de Santa Maria 2015
Schlagworte:
Online-Zugang:https://www.redalyc.org/articulo.oa?id=467547683042
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866817729819836416
author Reza Roshani
author_facet Reza Roshani
contents Parallel Genetic Algorithm for Shortest Path Routing Problem with Collaborative Neighbors Reza Roshani Mohammad Karim Sohrabi Estudios Ambientales Fine Grained Genetic Algorithms Shortest path routing Parallel Genetic Algorithm Shortest path routing is generally known as a kind of routing widely availed in computer netwo rks nowadays. Although advantageous algorithms exist for finding the shortest path, however alternative methods may have their own supremacy. In this paper, para llel genetic algorithm for finding the shortest path routing is resorted to. In order to improv e the computation time in this routing algorithm and to distribute the load balance between the processors as well, Fine - Grained parallel GA model is opted for. The proposed algorithm was simulated on Wraparound Mesh network topologies in different sizes. To this end, several experiments were anchored to identify the most influential parameters such as Migration rate, Mutation rate, and Crossover rate. The simulation result shows that best resul t of mutation rate is: about 0.02 and 0.03, and migration rate for transmission to the neighbor’s node is 3 of the best chromosomes. This study has already shown that through using performance - based GA which uses fine - grained parallel algorithms, timing germane shortest path routing can be improved. 2015 artículo científico 0100-8307 https://www.redalyc.org/articulo.oa?id=467547683042 en http://www.redalyc.org/revista.oa?id=4675 Ciência e Natura application/pdf Universidade Federal de Santa Maria Ciência e Natura (Brasil) Num.6-2 Vol.37
format Artículo científico
id redalyc_467547683042
language en
publishDate 2015
publisher Universidade Federal de Santa Maria
spellingShingle Parallel Genetic Algorithm for Shortest Path Routing Problem with Collaborative Neighbors
Reza Roshani
Estudios Ambientales
Fine
Grained
Genetic Algorithms
Shortest path routing
Parallel Genetic Algorithm
Parallel Genetic Algorithm for Shortest Path Routing Problem with Collaborative Neighbors Reza Roshani Mohammad Karim Sohrabi Estudios Ambientales Fine Grained Genetic Algorithms Shortest path routing Parallel Genetic Algorithm Shortest path routing is generally known as a kind of routing widely availed in computer netwo rks nowadays. Although advantageous algorithms exist for finding the shortest path, however alternative methods may have their own supremacy. In this paper, para llel genetic algorithm for finding the shortest path routing is resorted to. In order to improv e the computation time in this routing algorithm and to distribute the load balance between the processors as well, Fine - Grained parallel GA model is opted for. The proposed algorithm was simulated on Wraparound Mesh network topologies in different sizes. To this end, several experiments were anchored to identify the most influential parameters such as Migration rate, Mutation rate, and Crossover rate. The simulation result shows that best resul t of mutation rate is: about 0.02 and 0.03, and migration rate for transmission to the neighbor’s node is 3 of the best chromosomes. This study has already shown that through using performance - based GA which uses fine - grained parallel algorithms, timing germane shortest path routing can be improved. 2015 artículo científico 0100-8307 https://www.redalyc.org/articulo.oa?id=467547683042 en http://www.redalyc.org/revista.oa?id=4675 Ciência e Natura application/pdf Universidade Federal de Santa Maria Ciência e Natura (Brasil) Num.6-2 Vol.37
title Parallel Genetic Algorithm for Shortest Path Routing Problem with Collaborative Neighbors
topic Estudios Ambientales
Fine
Grained
Genetic Algorithms
Shortest path routing
Parallel Genetic Algorithm
url https://www.redalyc.org/articulo.oa?id=467547683042