In warehouses, order picking is known to be the most labor-intensive and costly task in which the employees account for a large part of the warehouse performance. Hence, many approaches exist, that optimize the order picking process based on diverse economic criteria. However, most of these approaches focus on a single economic objective at once and disregard ergonomic criteria in their optimization. Further, the influence of the placement of the items to be picked is underestimated and accordingly, too little attention is paid to the interdependence of these two problems. In this work, we aim at optimizing the storage assignment and the order picking problem within mezzanine warehouse with regards to their reciprocal influence. We propose a customized version of the Non-dominated Sorting Genetic Algorithm II (NSGA-II) for optimizing the storage assignment problem as well as an Ant Colony Optimization (ACO) algorithm for optimizing the order picking problem. Both algorithms incorporate multiple economic and ergonomic constraints simultaneously. Furthermore, the algorithms incorporate knowledge about the interdependence between both problems, aiming to improve the overall warehouse performance. Our evaluation results show that our proposed algorithms return better storage assignments and order pick routes compared to commonly used techniques for the following quality indicators for comparing Pareto fronts: Coverage, Generational Distance, Euclidian Distance, Pareto Front Size, and Inverted Generational Distance. Additionally, the evaluation regarding the interaction of both algorithms shows a better performance when combining both proposed algorithms.
翻译:在仓库中,人们知道,定购是雇员在仓库业绩中占很大比例的最劳力密集和最昂贵的任务。因此,存在许多办法,优化根据不同经济标准进行的定购过程;然而,这些办法大多同时侧重于单一经济目标,在优化时忽视了人类工程学标准。此外,低估了所选物品的放置影响,因此,对这两个问题的相互依存性给予的注意太少。在这项工作中,我们的目标是优化储存任务和定购顺序,在混合仓库内就它们相互影响的问题提出问题。我们建议了非主流理算Algorithm II(NSGA-II)的定制版本,以优化储存分配问题,并在优化时忽略了个人工程工程学标准。此外,这两种算法都同时纳入了多种经济和人为的制约。此外,这些算法包含了关于两个问题之间相互依存性的知识,目的是改善整个仓库业绩。我们的评估结果表明,我们拟议的算法在将储存任务和远距成本上都恢复了更好的组合,将Padrialalalalalalalalal II(NSII) 选择了比通常使用的技术的路径。