Article ID: | iaor20107538 |
Volume: | 180 |
Issue: | 1 |
Start Page Number: | 197 |
End Page Number: | 211 |
Publication Date: | Nov 2010 |
Journal: | Annals of Operations Research |
Authors: | Chang Pei-Chann, Chen Shih-Hsin, Fan Chin-Yuan, Mani V |
Keywords: | heuristics: genetic algorithms |
In this paper, a novel genetic algorithm is developed by generating artificial chromosomes with probability control to solve the machine scheduling problems. Generating artificial chromosomes for Genetic Algorithm (ACGA) is closely related to Evolutionary Algorithms Based on Probabilistic Models (EAPM). The artificial chromosomes are generated by a probability model that extracts the gene information from current population. ACGA is considered as a hybrid algorithm because both the conventional genetic operators and a probability model are integrated. The ACGA proposed in this paper, further employs the "evaporation concept" applied in Ant Colony Optimization (ACO) to solve the permutation flowshop problem. The evaporation concept is used to reduce the effect of past experience and to explore new alternative solutions. In this paper, we propose three different methods for the probability of evaporation. This probability of evaporation is applied as soon as a job is assigned to a position in the permutation flowshop problem. Experimental results show that our ACGA with the evaporation concept gives better performance than some algorithms in the literature.