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Multi-objective optimization of collation delay and makespan in mail-order pharmacy automated distribution system

机译:邮购药房自动分配系统中整理延迟和有效期的多目标优化

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In this research, the collation delay (CD) and makespan minimization problem in a mail-order pharmacy automated distribution (MOPAD) system are studied. The MOPAD systems, which are integrated with pharmaceutical auto-dispenser machines, auto-packer machines, and conveyor, are utilized to fulfill the increasing prescription demand in recent years. The motivation of this research is derived from the practical deadlock problem in a MOPAD system of the central fill pharmacies (CFP). Most of the customer orders consist of multiple medications, which need to be collated together before being packaged and shipped. The CD is defined as the fulfillment completion time difference between the first and last medications within the same order, which is a critical factor of the MOPAD systems throughput. When CD is minimized, the makespan often increases. Therefore, alternative scheduling solutions are often needed to balance the CD and makespan in the MOPAD system. This paper presents the trade-off solutions between minimizing CD and the makespan. Three multi-objective genetic algorithms with a three-tuples chromosome design, including Vector Evaluated Genetic Algorithm (VEGA), Multi-Objective Genetic Algorithm (MOGA), and non-dominated sorted genetic algorithm-II (NSGA-II), are implemented and compared under various system settings. Compared to the current implemented longest processing time (LPT) heuristic, three multi-objective genetic algorithms save the CD by 95.67 %, but only increase the makespan by 5.62 % on average. The results also show that the NSGA-II provided the best frontier.
机译:在这项研究中,研究了邮购药房自动分配(MOPAD)系统中的整理延迟(CD)和最小化制造周期问题。 MOPAD系统已与制药自动分配机,自动包装机和输送机集成在一起,可满足近年来不断增长的处方需求。这项研究的动机来自中央填充药房(CFP)的MOPAD系统中的实际死锁问题。大多数客户订单包含多种药物,在包装和运输之前需要将它们整理在一起。 CD定义为同一顺序内第一个药物和最后一个药物之间的完成完成时间差,这是MOPAD系统吞吐量的关键因素。当CD最小化时,制造期通常会增加。因此,通常需要替代的调度解决方案来平衡CD和MOPAD系统中的制造期。本文提出了在最小化CD和制造期之间的权衡解决方案。实施了三种具有三元组染色体设计的多目标遗传算法,包括向量评估遗传算法(VEGA),多目标遗传算法(MOGA)和非支配排序遗传算法II(NSGA-II)。在各种系统设置下进行比较。与当前实施的最长处理时间(LPT)启发式算法相比,三种多目标遗传算法可将CD节省95.67%,但平均只能将制造时间提高5.62%。结果还表明,NSGA-II提供了最好的前沿。

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