基于混合现实的在线 3D 货盘装载问题,在电子履约流程中实现增强智能

IF 6.9 2区 管理学 Q1 MANAGEMENT
T.T. Yang, Y. P. Tsang, C. H. Wu, K. T. Chung, C. K. M. Lee, S. S. M. Yuen
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引用次数: 0

摘要

托盘装载操作支持托盘和卡车装载优化的电子履行过程。目前,托盘装载问题是利用可用的货物信息离线优化的,这与典型的货运操作相比是有利的,但在处理分散的电子商务订单时效率低下。本研究开发了一种基于混合现实的在线托盘装载系统(MROPLS),该系统由深度强化学习技术和在线算法支持,在没有事先信息的情况下动态决定托盘装载操作的货物位置和方向。MROPLS提出了一种结合深度q网络的三维最大矩形非断头台切割策略,有效地提高了空间利用率。这种方法是使用前瞻性算法来实现的,该算法预测在线托盘装载过程中即将到来的包裹,并优化包裹的空间位置和方向决策。通过对顺丰速递、DHL和皇家邮政包裹和ISO托盘尺寸的模拟实验,验证了系统的可行性和性能。发现并总结了包装类型,托盘大小和前瞻性值之间的相互作用影响,以确定最佳的系统设置。借助MROPLS,可以增强在线托盘装载过程中的人工智能,从而实现仓库自动化中的最佳托盘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mixed reality-based online 3D pallet loading problem to achieve augmented intelligence in e-fulfilment processes

Mixed reality-based online 3D pallet loading problem to achieve augmented intelligence in e-fulfilment processes

Pallet loading operations support palletisation and truckload optimisation for e-fulfilment processes. Currently, the pallet loading problem is optimised offline using available cargo information, which is advantageous compared to typical freight operations but results in inefficiency when handling fragmented e-commerce orders. This research develops a mixed reality-based online pallet loading system (MROPLS) supported by deep reinforcement learning technology and online algorithms that dynamically decide cargo placements and orientations without prior information for pallet loading operations. The MROPLS proposes a 3-dimensional maximal-rectangle non-guillotine cutting strategy combined with a deep Q-network to increase space utilisation effectively. This approach is achieved using the lookahead algorithm, which predicts upcoming packages in the online pallet loading process and optimises package spatial location and orientation decision-making. We conduct simulation experiments to verify the system’s feasibility and performance by considering SF Express, DHL and Royal Mail package and ISO pallet sizes. The interaction effects between package types, pallet sizes and lookahead values were found and summarised to determine optimal system settings. With the aid of MROPLS, human intelligence in the online pallet loading process can be augmented, resulting in optimal palletisation in warehouse automation.

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来源期刊
CiteScore
6.20
自引率
23.30%
发文量
104
期刊介绍: Operations Management Research is a peer-reviewed journal that focuses on rapidly publishing high-quality research in the field of operations management. It aims to advance both the theory and practice of operations management across a wide range of topics and research paradigms. The journal covers all aspects of operations management, including manufacturing, supply chain, health care, and service operations. It welcomes various research methodologies, such as case studies, action research, surveys, mathematical modeling, and simulation. The goal of Operations Management Research is to promote research that enhances both the theory and practice of operations management, as it is an applied discipline. The journal also publishes Academic Notes, which are special papers that address research methodologies, the direction of the operations management field, and other topics of interest to academicians. Additionally, there is a demand for shorter and more focused research articles in operations management, which this journal aims to fulfill.
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