首页> 外文会议>Australian Conference on Progress in Artificial Life(ACAL 2007); 20071204-06; Gold Coast(AU) >Alternative Solution Representations for the Job Shop Scheduling Problem in Ant Colony Optimisation
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Alternative Solution Representations for the Job Shop Scheduling Problem in Ant Colony Optimisation

机译:蚁群优化中的车间调度问题的替代解决方案表示

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Ant colony optimisation (ACO), a constructive metaheuris-tic inspired by the foraging behaviour of ants, has frequently been applied to shop scheduling problems such as the job shop, in which a collection of operations (grouped into jobs) must be scheduled for processing on different machines. In typical ACO applications solutions are generated by constructing a permutation of the operations, from which a deterministic algorithm can generate the actual schedule. An alternative approach is to assign each machine one of a number of alternative dispatching rules to determine its individual processing order. This representation creates a substantially smaller search space biased towards good solutions. A previous study compared the two alternatives applied to a complex real-world instance and found that the new approach produced better solutions more quickly than the original. This paper considers its application to a wider set of standard benchmark job shop instances. More detailed analysis of the resultant search space reveals that, while it focuses on a smaller region of good solutions, it also excludes the optimal solution. Nevertheless, comparison of the performance of ACO algorithms using the different solution representations shows that, using this solution space, ACO can find better solutions than with the typical representation. Hence, it may offer a promising alternative for quickly generating good solutions to seed a local search procedure which can take those solutions to optimality.
机译:蚁群优化(ACO)是一种受蚂蚁觅食行为启发的建设性变元方法,经常被用于解决车间调度问题,例如车间作业,其中必须调度一组操作(分组为作业)进行处理在不同的机器上。在典型的ACO应用程序中,解决方案是通过构造操作的排列生成的,确定性算法可以根据该排列生成实际的计划。一种替代方法是为每台计算机分配许多替代调度规则之一,以确定其单独的处理顺序。这种表示产生了偏向良好解决方案的明显较小的搜索空间。先前的研究比较了适用于复杂现实世界实例的两种替代方法,发现新方法比原始方法更快地产生了更好的解决方案。本文考虑将其应用于更广泛的标准基准作业车间实例。对结果搜索空间进行更详细的分析后发现,尽管它专注于较小范围的良好解决方案,但同时也排除了最佳解决方案。不过,使用不同解决方案表示形式对ACO算法的性能进行比较表明,使用这种解决方案空间,ACO可以找到比典型表示形式更好的解决方案。因此,它可以为快速生成良好的解决方案以提供种子搜索程序提供一个有希望的选择,该本地搜索过程可以使这些解决方案达到最佳状态。

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