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Multi-objective parallel robotic dispensing planogram optimisation using association rule mining and evolutionary algorithms

机译:使用关联规则挖掘和进化算法的多目标并行机器人分配平面图优化

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This research addresses a medication planogram optimisation problem for robotic dispensing systems (RDSs) in mail-order pharmacy automation (MOPA) facilities. A MOPA is used by a high-throughput fulfilment facility that processes a large volume of prescription orders. In MOPA facilities, each RDS unit integrates auto-dispenser devices and a robot arm to count and dispense medications automatically to complete high demand. An RDS planogram is the allocation of medications in one RDS unit and their distribution in different RDS units. A significant challenge in MOPA systems is to design an efficient planogram strategy. In this study, the RDS planogram is optimised to meet three objectives: association between medications, workload balance of RDSs, and robot arm travel distance. Association rule mining (ARM) is applied to explore the associations between medications, whereas a nonlinear mixed-integer programming (MIP) model is developed to optimise medication allocation based on ARM outputs. Four evolutionary algorithms, namely Non-dominated Sorting Genetic Algorithm (NSGA-II), knee-based NSGA-II (k-NSGA-II), Pareto Archived Evolution Strategy (PAES), and Strength Pareto Evolutionary Algorithm (SPEA-II), are applied to solve the proposed planogram optimisation model on eight experimental problems. Based on the different performance evaluation criteria, the best algorithm with higher performance is identified for each criterion.
机译:该研究解决了邮购药房自动化(MOPA)设施中的机器人分配系统(RDS)的药物爆模优化问题。 MOPA被高通量履行设施使用,该设施处理大量处方命令。在MOPA设施中,每个RDS单元将自动分配器装置和机器人手臂集成,以自动计算和分配药物以完成高需求。 RDS Plapogram是一个RDS单元中的药物分配及其在不同RDS单元中的分布。 MOPA系统中的一项重大挑战是设计一种有效的平面图策略。在这项研究中,RDS策划图经过优化以满足三个目标:药物之间的关联,RDS的工作量平衡和机器人臂行程距离。关联规则挖掘(ARM)应用于探索药物之间的关联,而非线性混合整数编程(MIP)模型被开发成基于臂输出优化药物分配。四种进化算法,即非主导的分类遗传算法(NSGA-II),基于膝关节的NSGA-II(K-NSGA-II),Pareto存档的演化策略(PAES),以及强度帕累托进化算法(SPEA-II),应用于解决八个实验问题的建议的平面图优化模型。基于不同的性能评估标准,为每个标准识别具有更高性能的最佳算法。

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