Order Picking Problem: A Model for the Joint Optimisation of Order Batching, Batch Assignment Sequencing, and Picking Routing

IF 3.6 Q2 MANAGEMENT Logistics-Basel Pub Date : 2023-09-11 DOI:10.3390/logistics7030061
Antonio Maria Coruzzolo, Francesco Lolli, Elia Balugani, Elisa Magnani, Miguel Afonso Sellitto
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Abstract

Background: Order picking is a critical activity in end-product warehouses, particularly using the picker-to-part system, entail substantial manual labor, representing approximately 60% of warehouse work. Methods: This study develops a new linear model to perform batching, which allows for defining, assigning, and sequencing batches and determining the best routing strategy. Its goal is to minimise the completion time and the weighted sum of tardiness and earliness of orders. We developed a second linear model without the constraints related to the picking routing to reduce complexity. This model searches for the best routing using the closest neighbour approach. As both models were too complex to test, the earliest due date constructive heuristic algorithm was developed. To improve the solution, we implemented various algorithms, from multi-start with random ordering to more complex like iterated local search. Results: The proposed models were tested on a real case study where the picking time was reduced by 57% compared to single-order strategy. Conclusions: The results showed that the iterated local search multiple perturbation algorithms could successfully identify the minimum solution and significantly improve the solution initially obtained with the heuristic earliest due date algorithm.
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订单拣选问题:订单批处理、批分配排序和拣选路线的联合优化模型
背景:拣货是终端产品仓库中的一项关键活动,特别是使用拣货到零件系统,需要大量的体力劳动,约占仓库工作的60%。方法:本研究开发了一个新的线性模型来执行批处理,该模型允许对批进行定义、分配和排序,并确定最佳路由策略。它的目标是最小化完成时间以及延迟和提前订单的加权总和。我们开发了第二个线性模型,没有与拣选路线相关的约束,以降低复杂性。该模型使用最近邻方法搜索最佳路由。由于两种模型都过于复杂而难以测试,因此开发了最早到期日建设性启发式算法。为了改进解决方案,我们实现了各种算法,从随机排序的多启动到更复杂的迭代局部搜索。结果:提出的模型在一个真实的案例研究中进行了测试,其中采摘时间与单订单策略相比减少了57%。结论:结果表明,迭代局部搜索多重扰动算法能够成功地识别出最小解,并显著改善启发式最早到期日算法的初始解。
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来源期刊
Logistics-Basel
Logistics-Basel Multiple-
CiteScore
6.60
自引率
0.00%
发文量
0
审稿时长
11 weeks
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