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Multi-Agent Reinforcement Learning for Optimizing Path Planning of Transporters Considering the Congestion

Title
Multi-Agent Reinforcement Learning for Optimizing Path Planning of Transporters Considering the Congestion
Author
윤성재
Advisor(s)
Taebok Kim
Issue Date
2024. 2
Publisher
한양대학교 대학원
Degree
Master
Abstract
This paper studied a path planning method by utilizing the framework of Multi-Agent Reinforcement Learning (MARL) and other useful learning techniques to ensure agile and stable solution for the mega Distribution Centers (mega DCs) supporting smart logistics operations. We established a different types of reward and other techniques to enhance overall system performance. And, we trained MARL networks to optimize the paths of a limited number of transportation devices, considering system efficiency in smaller-scale environments. Finally, a strategy by using the parameters obtained from the initial training has been developed for operating a larger-scale system. Several mechanisms based on the graph theory has been also utilized to deal with collisions, congestion, and potential deadlock issues among transporters. From the extensive numerical analyses, the performance of the proposed mechanism has been validated for its practical applications in real cases.
URI
http://hanyang.dcollection.net/common/orgView/200000720469https://repository.hanyang.ac.kr/handle/20.500.11754/189156
Appears in Collections:
GRADUATE SCHOOL[S](대학원) > INDUSTRIAL ENGINEERING(산업공학과) > Theses (Master)
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