Practical Mixed Palletizing Manipulator System: Incorporating Practical Reinforcement Learning and Configuration-Space Motion Planning

  • Ahn, Woojin
  • Choi, Kyuwon
  • Kang, Seong-woo
  • Rho, Cheolkyun
  • Pae, Dongsung
  • 외 1명
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초록

Palletizing, also known as the 3D bin packing problem, is important for optimizing space utilization and automating packing processes, especially in the logistics industry. In practice, handling mixed palletizing scenarios, where a variety of boxes of different sizes are received in real time, is considerably challenging. Existing methods for solving the mixed palletizing problem often overlook practical constraints encountered in real-world applications, such as those pertaining to stability and robustness. In this paper, we propose a practical mixed palletizing manipulator system designed for structured real-world warehouse environments. Our manipulator system has two main components: a practical mixed palletizing model based on reinforcement learning (PMP-RL), which can facilitate stable and efficient box placing, and a configuration-space motion planning network (CMPNet), which can help achieve robust and efficient collision-free robot movement. The PMP-RL model is designed to maximize the pallet volume utilization while incorporating practical reward functions that enhance stability. CMPNet is used to directly predict motion trajectories in a 3D configuration space, and it facilitates real-time motion generation by effectively imitating expert-level paths. Overall, the manipulator system, comprising an automated conveyor belt, a camera-based recognition system, the PMP-RL model, and CMPNet, provide a robust and practical framework for mixed palletizing. Experiments conducted via simulations and in real-world environments have shown that the manipulator system can handle complex palletizing tasks with high efficiency and high stability. © 2004-2012 IEEE.

키워드

Behavior CloningDeep LearningManipulatorMixed PalletizingMotion PlanningReinforcement LearningRobotics
제목
Practical Mixed Palletizing Manipulator System: Incorporating Practical Reinforcement Learning and Configuration-Space Motion Planning
저자
Ahn, WoojinChoi, KyuwonKang, Seong-wooRho, CheolkyunPae, DongsungLim, Myo Taeg
DOI
10.1109/TASE.2025.3637854
발행일
2026
유형
Article
저널명
IEEE Transactions on Automation Science and Engineering
23
페이지
455 ~ 469