2023
DOI: 10.3390/machines12010008
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Multi-Agent Reinforcement Learning for Extended Flexible Job Shop Scheduling

Shaoming Peng,
Gang Xiong,
Jing Yang
et al.

Abstract: An extended flexible job scheduling problem is presented with characteristics of technology and path flexibility (dual flexibility), varied transportation time, and an uncertain environment. The scheduling can greatly increase efficiency and security in complex scenarios, e.g., distributed vehicle manufacturing, and multiple aircraft maintenance. However, optimizing the scheduling puts forward higher requirements on accuracy, real time, and generalization, while subject to the curse of dimension and usually in… Show more

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“…Experimental results indicated that this method could provide better solutions, demonstrating its good performance. Peng et al [31] designed a multi-agent reinforcement learning approach to solve the flexible job-shop scheduling problem, considering flexibility and variations in transportation time.…”
Section: Introductionmentioning
confidence: 99%
“…Experimental results indicated that this method could provide better solutions, demonstrating its good performance. Peng et al [31] designed a multi-agent reinforcement learning approach to solve the flexible job-shop scheduling problem, considering flexibility and variations in transportation time.…”
Section: Introductionmentioning
confidence: 99%