Manufacturing resource-based self-organizing scheduling using multi-agent system and deep reinforcement learning
Created by W.Langdon from
gp-bibliography.bib Revision:1.8414
- @Article{Li:2025:jmsy,
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author = "Yuxin Li and Qihao Liu and Xinyu Li and Liang Gao",
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title = "Manufacturing resource-based self-organizing
scheduling using multi-agent system and deep
reinforcement learning",
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journal = "Journal of Manufacturing Systems",
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year = "2025",
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volume = "79",
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pages = "179--198",
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keywords = "genetic algorithms, genetic programming, Multi-agent
deep reinforcement learning, Multi-agent system,
Production-logistics, Self-organizing scheduling,
Disturbance events",
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ISSN = "0278-6125",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0278612525000123",
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DOI = "
doi:10.1016/j.jmsy.2025.01.004",
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abstract = "Enterprises are vigorously developing smart factories
to meet the approaching mass customization. As a
promising control paradigm for smart factories, the
self-organising scheduling mode can build networked
manufacturing things. Compared to the global control of
traditional scheduling methods, its decentralized
control can provide stronger dynamic response and
self-regulation capabilities. Therefore, this paper
proposes a self-organising scheduling method based on
multi-agent system (MAS) and deep reinforcement
learning (DRL) for smart factory. Firstly, a novel MAS
with partially decentralized control architecture is
established, where the manufacturing resources and
cloud are constructed as agents. Then, unlike
traditional methods, a self-organising negotiation
mechanism based on contract network protocol is
designed for production-logistics collaboration.
Considering problem domain knowledge, logistics task
bidding of automated guided vehicle agents is based on
heuristics, and processing task bidding of machine
agents is based on multi-agent DRL. It can ensure the
timely delivery of orders, rapid logistics process and
efficient production. Finally, machine agents embedded
with DRL adopt the centralized training and
decentralized execution framework. An action space
based on three priorities is designed to ensure the
correct bidding of each machine agent and reasonable
auction of processing tasks. Experimental results show
that compared with scheduling rules, genetic
programming and three DRL methods, the proposed method
achieves better scheduling performance through
reasonable competition of heterogeneous resource
agents, and can effectively handle new job arrivals and
machine breakdowns",
- }
Genetic Programming entries for
Yuxin Li
Qihao Liu
Xinyu Li
Liang Gao
Citations