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An iterated greedy algorithm for total flow time minimization in unrelated parallel batch machines with unequal job release times

机译:一种迭代贪婪算法,用于在不相关的作业释放时间不相同的并行批处理计算机中将总流时间最小化

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摘要

This paper investigates the problem of scheduling a set of jobs with arbitrary sizes and non-zero release times on a set of unrelated parallel batch machines with different capacities so as to minimize the total flow time of the jobs. The total flow time, defined as the total amount of time that the jobs spend in the system (i.e. the period between the job release dates and its completion times), is one of the most important objectives in scheduling problems, since it can lead to stable utilization of resources and reduction of working-in-process inventory. Motivated by the computational complexity of the problem, a simple and effective iterated greedy (IG) algorithm is proposed to solve it. The IG algorithm uses an efficient greedy heuristic to reconstruct solutions and a local search procedure to further enhance the solution quality. In attempting to obtain optimal solutions for small-medium size instances, a mixed integer programming model for the problem is also presented. The performance of the proposed algorithm is tested on a comprehensive set of small, medium and large benchmark of randomly generated instances, and is compared to three benchmark meta-heuristic algorithms (Discrete Differential Evolution, Ant Colony Optimization and Simulated Annealing) recently proposed for similar parallel batch machine scheduling problems. Experimental results and statistical tests show that the proposed algorithm is significantly superior in performance than the other algorithms.
机译:本文研究了在一组具有不同容量的无关并行批处理计算机上调度具有任意大小和非零释放时间的一组作业的问题,从而最大程度地减少了作业的总流动时间。总流程时间定义为工作在系统中花费的总时间(即,工作发布日期与其完成时间之间的时间段),是安排问题的最重要目标之一,因为它可能导致资源的稳定利用和在制品库存的减少。由于该问题的计算复杂性,提出了一种简单有效的迭代贪婪算法(IG)来解决该问题。 IG算法使用有效的贪婪启发式算法来重建解决方案,并使用局部搜索过程来进一步提高解决方案的质量。在尝试为中小型实例获得最佳解决方案时,还提出了针对该问题的混合整数规划模型。该算法的性能在随机生成的实例的一组小型,中型和大型基准上进行了测试,并与最近针对相似性提出的三种基准元启发式算法(离散差分进化,蚁群优化和模拟退火)进行了比较。并行批处理机的调度问题。实验结果和统计测试表明,该算法在性能上明显优于其他算法。

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