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Data-driven decision support system for managing item allocation in an ASRS: A framework development and a case study

机译:用于管理ASR中的项目分配的数据驱动决策支持系统:框架开发和案例研究

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摘要

When dealing with Automated Storage and Retrieval Systems (ASRS), the allocation of items to the most convenient storage location depends on the vast amount of data produced internally (e.g., Enterprise Resource Planning, Manufacturing Enterprise Systems) and externally (e.g. Supply Chain Management). Moreover, a proper item allocation in the warehouse has a strong influence on the warehouse saturation levels and picking times. In this perspective, the present work proposes the application of data-driven algorithms for managing items in an Automated Storage and Retrieval System (ASRS) in order to reduce the picking times and storage space. Specifically, a four-layer framework is adopted for collecting data produced by different information sources and analyzing them through a data-driven approach. The analytics layer is performed by combining the Association Rule Mining (ARM) technique, to investigate the network of influences among data collected, and a simulation approach for assessing the feasibility of the proposed implementation. The Association Rule Mining allows company managers to identify the components that should be located on the same tray in the ASRS, defining the couples of items frequently picked together in order to reduce the total picking time. The proposed approach is applied to the case study of a shoe manufacturing company to explain the research approach and show how the implementation of the data-driven methodology can provide valuable support in defining item allocation and picking rules. The proposed Association Rule Mining method is new in this context and it has shown a positive impact in comparison to traditional solutions of warehouse management, providing a complete overview of the items' interactions and identifying communities of items that define local and global patterns and locate influential entities.
机译:处理自动存储和检索系统(ASR)时,将项目分配到最方便的存储位置取决于内部(例如,企业资源规划,制造企业系统)和外部产生的大量数据(例如供应链管理) 。此外,仓库中的适当项目分配对仓库饱和度和拣选时间有很大的影响。在这种观点中,本工作提出了数据驱动算法的应用,以管理自动存储和检索系统(ASR)中的项目,以便减少拣选时间和存储空间。具体地,采用四层框架来收集不同信息源产生的数据并通过数据驱动方法分析它们。通过组合关联规则挖掘(ARM)技术来研究分析层,以研究收集的数据之间的影响网络,以及用于评估建议实施的可行性的仿真方法。关联规则挖掘允许公司管理者识别应位于ASR的同一托盘上的组件,定义经常挑选的项目的夫妇以减少总拾取时间。拟议的方法适用于鞋业制造公司的案例研究,以解释研究方法,并展示数据驱动方法的实施方式如何在定义项目分配和采摘规则方面提供有价值的支持。在此背景下,建议的关联规则挖掘方法是新的,它与仓库管理的传统解决方案相比,它显示了积极的影响,提供了项目的交互和识别定义本地和全局模式的物品的社区的完整概述,并定位有影响的物品实体。

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