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An Improved Ant Colony Algorithm for a Single-machine Scheduling Problem with Setup Times

机译:一种改进的蚁群算法,用于使用设置时间的单机调度问题

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Motivated by industrial applications we study a single-machine scheduling problem in which all the jobs are mutually independent and available at time zero. The machine processes the jobs sequentially and it is not idle if there is any job to be processed. The operation of each job cannot be interrupted. The machine cannot process more than one job at a time. A setup time is needed if the machine switches from one type of job to another. The objective is to find an optimal schedule with the minimal total jobs' completion time. While the sum of jobs' processing time is always a constant, the objective is to minimize the sum of setup times. Ant colony optimization (ACO) is a meta-heuristic that has recently been applied to scheduling problem. In this paper we propose an improved ACO-Branching Ant Colony with Dynamic Perturbation (DPBAC) algorithm for the single-machine scheduling problem. DPBAC improves traditional ACO in following aspects: introducing Branching Method to choose starting points; improving state transition rules; introducing Mutation Method to shorten tours; improving pheromone updating rules and introducing Conditional Dynamic Perturbation Strategy. Computational results show that DPBAC algorithm is superior to the traditional ACO algorithm.
机译:由工业应用程序的动机我们研究了一台机器调度问题,其中所有作业都是相互独立的,并在时间为零。如果有任何要处理的作业,机器顺序地处理作业并不空闲。每个作业的操作都无法中断。这台机器一次无法处理多个作业。如果机器从一种类型的作业切换到另一个作业,则需要设置时间。目标是找到具有最小工作完井时间的最佳计划。虽然作业的处理时间总和始终是常数,但目标是最小化设置时间的总和。蚁群优化(ACO)是最近应用于调度问题的元启发式。在本文中,我们提出了一种改进的ACO-分支蚁群,具有用于单机调度问题的动态扰动(DPBAC)算法。 DPBAC在以下几个方面提高了传统的ACO:引入分支方法选择起点;改善国家过渡规则;引入缩短旅游的突变方法;改善信息素更新规则并引入条件动态扰动策略。计算结果表明,DPBAC算法优于传统的ACO算法。

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