粒子群优化算法在交叉对接分配问题中的实现

Samuel Ro Paian Purba, Harummi S. Amarilies, Nur Layi Rachmawati, A. P. Redi
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引用次数: 6

摘要

为了提高客户满意度,保持客户忠诚度,物流服务商必须注重所提供的服务质量,其中之一就是有效的仓库管理,特别是在安排产品运输车辆的到达和离开方面。因此,本研究讨论了PT XYZ交叉对接仓库的交付和取件调度形式的仓库管理。本研究的目的是获得有效的送货和取件调度,并使运营成本最小化。交叉对接分布问题是一个np-hard问题,因此采用粒子群优化算法,这是一种元启发式的求解方法。结果表明,有效的派送提货调度可以节省3.12%的库存成本,将延迟率从73%降低到0%。采用粒子群算法的调度过程平均计算时间为26.2秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTATION OF PARTICLE SWARM OPTIMIZATION ALGORITHM IN CROSS-DOCKING DISTRIBUTION PROBLEM
In order to increase customer satisfaction and maintain customer loyalty, logistics service providers must pay attention to the quality of service provided, one of which is effecive warehouse management, especially in scheduling the arrival and departure of products transporting vehicles. Therefore, this study discusses warehouse management in form of delivery and pickup scheduling at PT XYZ’s cross-docking warehouse. This study aims to obtain effective delivery and pickup scheduling and minimize operational costs. The Cross-docking Distribution Problem is an np-hard problem, so the Particle Swarm Optimization algorithm is used, which is a metaheuristic method in finding solutions. Based on the result, it was found that effective delivery and pickup scheduling was able to save inventory cost by 3.12% and reduce the percentage of delays from 73% to 0%. The scheduling process using Particle Swarm Optimization requires an average computation time of 26.2 seconds.
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