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Container port truck dispatching optimization using Real2Sim based deep reinforcement learning

Jin, Jiahuan; Cui, Tianxiang; Bai, Ruibin; Qu, Rong

Container port truck dispatching optimization using Real2Sim based deep reinforcement learning Thumbnail


Authors

Jiahuan Jin

Tianxiang Cui

Ruibin Bai



Abstract

In marine container terminals, truck dispatching optimization is often considered as the primary focus as it provides crucial synergy between the sea-side operations and yard-side activities and hence can greatly affect the terminal throughput and quay crane utilization. However, many existing studies rely on strong assumptions that often overlook the uncertainties and dynamics innate to real-life applications. In this work, we propose a dynamic truck dispatching system for container ports equipped with the latest IoT technologies. The system is comprised of Real2Sim simulation and a truck dispatch agent, trained through a spatial-attention based deep reinforcement learning module, supported by an expert network. The proposed Real2Sim framework has the ability to model the non-linear complexities and non-deterministic events while our attention-aware deep reinforcement learning module is capable of making full use of both historical and real-time port data to learn a high-quality truck dispatching policy under uncertainties. Extensive experiments show our proposed method has good generalization and achieves the state-of-the-art results on the problems derived from real-life data of a large international port.

Citation

Jin, J., Cui, T., Bai, R., & Qu, R. (2024). Container port truck dispatching optimization using Real2Sim based deep reinforcement learning. European Journal of Operational Research, 315(1), 161-175. https://doi.org/10.1016/J.EJOR.2023.11.038

Journal Article Type Article
Acceptance Date Nov 23, 2023
Online Publication Date Nov 28, 2023
Publication Date May 16, 2024
Deposit Date Feb 28, 2025
Publicly Available Date Feb 28, 2025
Journal European Journal of Operational Research
Print ISSN 0377-2217
Electronic ISSN 1872-6860
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 315
Issue 1
Pages 161-175
DOI https://doi.org/10.1016/J.EJOR.2023.11.038
Public URL https://nottingham-repository.worktribe.com/output/44224139
Publisher URL https://www.sciencedirect.com/science/article/pii/S0377221723008792?via%3Dihub

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