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A policy-based Monte Carlo tree search method for container pre-marshalling

Author

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  • Ziliang Wang
  • Chenhao Zhou
  • Ada Che
  • Jingkun Gao

Abstract

The container pre-marshalling problem (CPMP) aims to minimise the number of reshuffling moves, ultimately achieving an optimised stacking arrangement in each bay based on the priority of containers during the non-loading phase. Given the sequential decision nature, we formulated the CPMP as a Markov decision process (MDP) model to account for the specific state and action of the reshuffling process. To address the challenge that the relocated container may trigger a chain effect on the subsequent reshuffling moves, this paper develops an improved policy-based Monte Carlo tree search (P-MCTS) to solve the CPMP, where eight composite reshuffling rules and modified upper confidence bounds are employed in the selection phases, and a well-designed heuristic algorithm is utilised in the simulation phases. Meanwhile, considering the effectiveness of reinforcement learning methods for solving the MDP model, an improved Q-learning is proposed as the compared method. Numerical results show that the P-MCTS outperforms all compared methods in scenarios where all containers have different priorities and scenarios where containers can share the same priority.

Suggested Citation

  • Ziliang Wang & Chenhao Zhou & Ada Che & Jingkun Gao, 2024. "A policy-based Monte Carlo tree search method for container pre-marshalling," International Journal of Production Research, Taylor & Francis Journals, vol. 62(13), pages 4776-4792, July.
  • Handle: RePEc:taf:tprsxx:v:62:y:2024:i:13:p:4776-4792
    DOI: 10.1080/00207543.2023.2279130
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