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Trajectory Scheduling Methods for minimizing total tardiness in a flowshop

机译:最小化流水车间总拖延的轨迹调度方法

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In this paper, Trajectory Scheduling Methods (TSMs) are proposed for the permutation flowshop scheduling problem with total tardiness minimization criterion. TSMs belong to an iterative local search framework, in which local search is performed on an initial solution, a perturbation operator is deployed to improve diversification, and a restart point mechanism is used to select the new start point of another cycle. In terms of the insertion and swap neighborhood structures, six composite heuristics are introduced, which exploit the search space with a strong intensification effect. Based on purely insertion-based or swap-based perturbation structures, three compound perturbation structures are developed that construct a candidate restart point set rather than just a single restart point. The distance between the current best solution and each start point of the set is defined, according to which the diversification effect of TSMs can be boosted by choosing the most appropriate restart point for the next iteration. A total of 18 trajectory scheduling methods are constructed by different combinations of composite heuristics. Both the best and worst combinations are compared with three best existing sequential meta-heuristics for the considered problem on 540 benchmark instances. Experimental results show that the proposed heuristics significantly outperform the three best existing algorithms within the same computation time.
机译:针对总时延最小化准则的置换流水车间调度问题,提出了轨迹调度方法(TSMs)。 TSM属于迭代本地搜索框架,其中在初始解决方案上执行本地搜索,部署了扰动算子以改善多样性,并使用重新启动点机制来选择另一个循环的新起点。在插入和交换邻域结构方面,引入了六种组合启发法,它们充分利用了搜索空间,并具有很强的增强作用。基于纯粹基于插入或基于交换的扰动结构,开发了三种复合扰动结构,它们构造了一个候选重新启动点集,而不仅仅是一个重新启动点。定义当前最佳解决方案与集合的每个起点之间的距离,根据此距离,可以通过为下一次迭代选择最合适的重启点来增强TSM的多样化效果。通过组合启发式的不同组合构造了总共18种轨迹调度方法。在540个基准实例上,针对考虑的问题,将最佳组合和最差组合与三种最佳现有顺序元启发式算法进行比较。实验结果表明,在相同的计算时间内,所提出的启发式算法明显优于三种最佳算法。

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