an article by Haipeng Zhang and Mitsuo Gen in International Journal of Manufacturing Technology and Management Volume 16 Number 1/2 (2009)
Abstract
In this paper, the authors combine Ant Colony Optimisation (ACO) with some randomised dispatching heuristics and propose a special transition rule for finding the best schedule to the job-shop sceduling (JSP) problems. Moreover, a special critical path-based local search is also combined to improve the best solutions by reducing the idle time. In order to gain higher efficiency of the proposed algorithm and avoid the early convergence in local optimal solution, they enhance the hybrid ACO by building a parallel hybrid Ant Colony Optimisation (ph-ACO) algorithm. Some numerical examples are used to demonstrate the performance of the ph-ACO and they can find that the proposed ph-ACO algorithm with Longest Remaining processing Time (LRT) and Longest Remaining processing time Excluding the operation under consideration (LRE) can both improve the efficiency of the algorithm obviously. Furthermore, we also decide the appropriate parameter setting of β is around 2. Finally, after comparing with hybrid Genetic Algorithm (GA) by solving same benchmark problems, the experimental results show the proposed ph-ACO outperforms traditional ACO and hybrid GA.
Hazel's comment:
Sorry but I couldn't resist including this one as an example of some of the totally irrelevant stuff I have to read (skim through) to get at the valuable things!
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