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Dynamic multi-tour order picking in an automotive-part warehouse based on attention-aware deep reinforcement learning

  • Xiaohan Wang
  • , Lin Zhang*
  • , Lihui Wang
  • , Enrique Ruiz Zuñiga
  • , Xi Vincent Wang*
  • , Erik Flores-García
  • *Corresponding author for this work
  • Beihang University
  • KTH Royal Institute of Technology
  • State Key Laboratory of Intelligent Manufacturing System Technology

Research output: Contribution to journalArticlepeer-review

Abstract

Dynamic order picking has usually demonstrated significant impacts on production efficiency in warehouse management. In the context of an automotive-part warehouse, this paper addresses a dynamic multi-tour order-picking problem based on a novel attention-aware deep reinforcement learning-based (ADRL) method. The multi-tour represents that one order-picking task must be split into multiple tours due to the cart capacity and the operator's workload constraints. First, the multi-tour order-picking problem is formulated as a mathematical model, and then reformulated as a Markov decision process. Second, a novel DRL-based method is proposed to solve it effectively. Compared to the existing DRL-based methods, this approach employs multi-head attention to perceive warehouse situations. Additionally, three improvements are proposed to further strengthen the solution quality and generalization, including (1) the extra location representation to align the batch length during training, (2) the dynamic decoding to integrate real-time information of the warehouse environment during inference, and (3) the proximal policy optimization with entropy bonus to facilitate action exploration during training. Finally, comparison experiments based on thousands of order-picking instances from the Swedish warehouse validated that the proposed ADRL could outperform the other twelve DRL-based methods at most by 40.6%, considering the optimization objective. Furthermore, the performance gap between ADRL and seven evolutionary algorithms is controlled within 3%, while ADRL can be hundreds or thousands of times faster than these EAs regarding the solving speed.

Original languageEnglish
Article number102959
JournalRobotics and Computer-Integrated Manufacturing
Volume94
DOIs
StatePublished - Aug 2025

Keywords

  • Deep reinforcement learning
  • Industry 5.0
  • Intelligent decision-making
  • Manual order picking
  • Smart manufacturing system

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