Two genetic algorithms for the bandwidth multicoloring problem
In this paper the Bandwidth Multicoloring Problem (BMCP) and the Bandwidth Coloring Problem (BCP) are considered. The problems are solved by two genetic algorithms (GAs) which use the integer encoding and standard genetic operators adapted to the problems. In both proposed implementations, all i...
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University of Belgrade
2012-01-01
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doaj-4c0d9455dedc40cb91108b71cf019b812020-11-24T20:54:54ZengUniversity of BelgradeYugoslav Journal of Operations Research0354-02431820-743X2012-01-0122222524610.2298/YJOR100927020FTwo genetic algorithms for the bandwidth multicoloring problemFijuljanin JasminaIn this paper the Bandwidth Multicoloring Problem (BMCP) and the Bandwidth Coloring Problem (BCP) are considered. The problems are solved by two genetic algorithms (GAs) which use the integer encoding and standard genetic operators adapted to the problems. In both proposed implementations, all individuals are feasible by default, so search is directed into the promising regions. The first proposed method named GA1 is a constructive metaheuristic that construct solution, while the second named GA2 is an improving metaheuristic used to improve an existing solution. Genetic algorithms are tested on the publicly-available GEOM instances from the literature. Proposed GA1 has achieved a much better solution than the calculated upper bound for a given problem, and GA2 has significantly improved the solutions obtained by GA1. The obtained results are also compared with the results of the existing methods for solving BCP and BMCP.http://www.doiserbia.nb.rs/img/doi/0354-0243/2012/0354-02431200020F.pdfevolutionary computationgraph coloring problemcombinatorial optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Fijuljanin Jasmina |
spellingShingle |
Fijuljanin Jasmina Two genetic algorithms for the bandwidth multicoloring problem Yugoslav Journal of Operations Research evolutionary computation graph coloring problem combinatorial optimization |
author_facet |
Fijuljanin Jasmina |
author_sort |
Fijuljanin Jasmina |
title |
Two genetic algorithms for the bandwidth multicoloring problem |
title_short |
Two genetic algorithms for the bandwidth multicoloring problem |
title_full |
Two genetic algorithms for the bandwidth multicoloring problem |
title_fullStr |
Two genetic algorithms for the bandwidth multicoloring problem |
title_full_unstemmed |
Two genetic algorithms for the bandwidth multicoloring problem |
title_sort |
two genetic algorithms for the bandwidth multicoloring problem |
publisher |
University of Belgrade |
series |
Yugoslav Journal of Operations Research |
issn |
0354-0243 1820-743X |
publishDate |
2012-01-01 |
description |
In this paper the Bandwidth Multicoloring Problem (BMCP) and the Bandwidth Coloring Problem (BCP) are considered. The problems are solved by two genetic algorithms (GAs) which use the integer encoding and standard genetic operators adapted to the problems. In both proposed implementations, all individuals are feasible by default, so search is directed into the promising regions. The first proposed method named GA1 is a constructive metaheuristic that construct solution, while the second named GA2 is an improving metaheuristic used to improve an existing solution. Genetic algorithms are tested on the publicly-available GEOM instances from the literature. Proposed GA1 has achieved a much better solution than the calculated upper bound for a given problem, and GA2 has significantly improved the solutions obtained by GA1. The obtained results are also compared with the results of the existing methods for solving BCP and BMCP. |
topic |
evolutionary computation graph coloring problem combinatorial optimization |
url |
http://www.doiserbia.nb.rs/img/doi/0354-0243/2012/0354-02431200020F.pdf |
work_keys_str_mv |
AT fijuljaninjasmina twogeneticalgorithmsforthebandwidthmulticoloringproblem |
_version_ |
1716793312391725056 |