在线三维料箱打包:带缓冲区的 DRL 算法

Jiawei Zhang, Tianping Shuai
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引用次数: 0

摘要

在线 3D 仓储包装问题(3D-BPP)广泛应用于物流行业,对推动行业智能化转型具有重要的现实意义。启发式算法过于依赖人工经验来制定较为完善的打包规则。近年来,许多学者通过深度强化学习(DRL)算法来解决 3D-BPP 问题。然而,这些算法忽略了人工包装过程中的许多技能,其中最重要的技能之一就是工人在物品包装不当时将物品放在一边。受这一技能的启发,我们提出了一种带有缓冲区的 DRL 算法。首先,我们定义了浪费空间和缓冲区。然后,我们将它们整合到 DRL 算法框架中。重要的是,我们比较了不同浪费空间阈值和不同缓冲区大小下的垃圾箱利用率。实验结果表明,我们的算法优于现有的启发式算法和 DRL 算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Three-Dimensional Bin Packing: A DRL Algorithm with the Buffer Zone
The online 3D bin packing problem(3D-BPP) is widely used in the logistics industry and is of great practical significance for promoting the intelligent transformation of the industry. The heuristic algorithm relies too much on manual experience to formulate more perfect packing rules. In recent years, many scholars solve 3D-BPP via deep reinforcement learning(DRL) algorithms. However, they ignore many skills used in manual packing, one of the most important skill is workers put the item aside if the item is packed improperly. Inspired by this skill, we propose a DRL algorithm with a buffer zone. Firstly, we define the wasted space and the buffer zone. And then, we integrate them into the DRL algorithm framework. Importantly, we compare the bin utilization with di erent thresholds of wasted space and di erent buffer zone sizes. Experimental results show that our algorithm outperforms existing heuristic algorithms and DRL algorithms.
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