Paper
20 December 2024 A path planning approach for multi-task AGV based on deep reinforcement learning and ant colony algorithm
Yulong Shi
Author Affiliations +
Proceedings Volume 13421, Eighth International Conference on Traffic Engineering and Transportation System (ICTETS 2024); 134215J (2024) https://doi.org/10.1117/12.3054704
Event: Eighth International Conference on Traffic Engineering and Transportation System (ICTETS 2024), 2024, Dalian, China
Abstract
With the increasing demand of distribution, it brings new challenges to the current algorithms of path optimization. Due to the effectiveness of the algorithm in complex scenes, there are still shortcomings in the logistics equipment path planning. In order to fill this gap, a negative reinforcement learning ant colony algorithm for multi-task AGV is proposed for path planning. Firstly, the path selection considering the material delivery time and AGV efficiency is analyzed. Secondly, the corresponding model assumptions are made for the path optimization problems under different tasks, and the negative reinforcement learning ant colony algorithm is used to make the optimal decision. Finally, according to the material distribution process of a cable workshop, the case is verified.
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Yulong Shi "A path planning approach for multi-task AGV based on deep reinforcement learning and ant colony algorithm", Proc. SPIE 13421, Eighth International Conference on Traffic Engineering and Transportation System (ICTETS 2024), 134215J (20 December 2024); https://doi.org/10.1117/12.3054704
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KEYWORDS
Machine learning

Deep learning

Manufacturing

Mathematical optimization

Algorithm development

Particle swarm optimization

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