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首页> 外文期刊>European Journal of Operational Research >Ant colony optimization with a specialized pheromone trail for the car-sequencing problem
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Ant colony optimization with a specialized pheromone trail for the car-sequencing problem

机译:带有特定信息素踪迹的蚁群优化解决了汽车排序问题

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摘要

This paper studies the learning process in an ant colony optimization algorithm designed to solve the problem of ordering cars on an assembly line (car-sequencing problem). This problem has been shown to be NP-hard and evokes a great deal of interest among practitioners. Learning in an ant algorithm is achieved by using an artificial pheromone trail, which is a central element of this metaheuristic. Many versions of the algorithm are found in literature, the main distinction among them being the management of the pheromone trail. Nevertheless, few of them seek to perfect learning by modifying the internal structure of the trail. In this paper, a new pheromone trail structure is proposed that is specifically adapted to the type of constraints in the car-sequencing problem. The quality of the results obtained when solving three sets of benchmark problems is superior to that of the best solutions found in literature and shows the efficiency of the specialized trail.
机译:本文研究了一种蚁群优化算法中的学习过程,该算法旨在解决在装配线上订购汽车的问题(汽车排序问题)。该问题已被证明是NP难题,引起了从业者的极大兴趣。蚂蚁算法中的学习是通过使用人工信息素追踪实现的,该信息素追踪是这种元启发式算法的核心要素。在文献中找到了该算法的许多版本,它们之间的主要区别是信息素踪迹的管理。尽管如此,他们中很少有人通过修改步道的内部结构来寻求完美的学习。在本文中,提出了一种新的信息素路径结构,该结构特别适合于汽车排序问题中的约束类型。解决三组基准问题时获得的结果质量优于文献中的最佳解决方案,并且显示了专业路径的效率。

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