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Solving coupled task assignment and capacity planning problems for a job shop by using a concurrent genetic algorithm

机译:使用并发遗传算法解决作业车间的任务分配和产能计划耦合问题

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The problems of task assignment and capacity planning of manufacturing systems have been researched for many years. However, in the existing literature, these two types of problems are researched independently. Namely, when solving the task assignment problem, it is usually assumed that the production capacity of the manufacturing systems has been determined. On the other hand, when solving the capacity planning problem, the production tasks assigned to the workstations in the manufacturing system have also been determined. Actually, the task assignment problem and the capacity planning problem are coupled with each other. When we assign production tasks to workstations, production capacities of these workstations should be regulated so that they are enough for completing the tasks. At the same time, when planning the production capacity, we must know what production tasks are assigned to what workstations. This research focuses on the coupling relations between the two problems for a closed job shop, in which the total work-in-process (WIP) is assumed to be constant. The objective of the task assignment problem is to balance the workloads of the workstations and the objectives of the capacity planning problem are maximising the throughput and minimising total costs of machine purchasing and WIP inventory. We construct the fundamental system architecture for controlling the two coupled optimisation processes, and propose a concurrent genetic algorithm (CGA) to solve the two coupled optimisation problems. The influences of the decision variables of one problem on the objective function of the other problem are taken into consideration when the fitness functions of the CGA are constructed. Numerical experiments are done to verify the effectiveness of the algorithm.
机译:任务分配和制造系统的产能计划问题已经研究了很多年。然而,在现有文献中,这两种类型的问题是独立研究的。即,在解决任务分配问题时,通常假定已经确定了制造系统的生产能力。另一方面,在解决容量计划问题时,还已经确定了分配给制造系统中的工作站的生产任务。实际上,任务分配问题和能力计划问题是相互联系的。当我们将生产任务分配给工作站时,应调整这些工作站的生产能力,以使其足以完成任务。同时,在计划生产能力时,我们必须知道将哪些生产任务分配给了哪些工作站。这项研究着重于封闭车间的两个问题之间的耦合关系,其中假定在制品总工时(WIP)是恒定的。任务分配问题的目的是平衡工作站的工作量,而容量计划问题的目的是使吞吐量最大化并使机器购买和在制品库存的总成本最小化。我们构建了控制两个耦合优化过程的基本系统架构,并提出了并行遗传算法(CGA)来解决两个耦合优化问题。构建CGA的适应度函数时,应考虑一个问题的决策变量对另一个问题的目标函数的影响。进行了数值实验,验证了算法的有效性。

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