Article ID: | iaor200971964 |
Country: | United States |
Volume: | 2006 |
Issue: | 65746 |
Start Page Number: | 1 |
End Page Number: | 17 |
Publication Date: | Jan 2006 |
Journal: | Journal of Applied Mathematics & Decision Sciences |
Authors: | Belkadi K, Benyettou M, Gourgand M |
Keywords: | heuristics: genetic algorithms |
This paper addresses scheduling problems in hybrid flow shop-like systems with a migration parallel genetic algorithm (PGA_MIG). This parallel genetic algorithm model allows genetic diversity by the application of selection and reproduction mechanisms nearer to nature. The space structure of the population is modified by dividing it into disjoined subpopulations. From time to time, individuals are exchanged between the different subpopulations (migration). Influence of parameters and dedicated strategies are studied. These parameters are the number of independent subpopulations, the interconnection topology between subpopulations, the choice/replacement strategy of the migrant individuals, and the migration frequency. A comparison between the sequential and parallel version of genetic algorithm (GA) is provided. This comparison relates to the quality of the solution and the execution time of the two versions. The efficiency of the parallel model highly depends on the parameters and especially on the migration frequency. In the same way this parallel model gives a significant improvement of computational time if it is implemented on a parallel architecture which offers an acceptable number of processors (as many processors as subpopulations).