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AuthorJia, Yanan
AuthorGao, Kaizhou
AuthorRen, Yaxian
AuthorSuganthan, Ponnuthurai Nagaratnam
AuthorSang, Hongyan
Available date2025-11-09T11:43:06Z
Publication Date2025-10
Publication NameJournal of Industrial and Management Optimization
Identifierhttp://dx.doi.org/10.3934/jimo.2025127
CitationJia, Y., Gao, K., Ren, Y., Suganthan, P. N., & Sang, H. (2025). Two reinforcement learning strategies based meta-heuristics for scheduling partial reentrant distributed flow-shops. Journal of Industrial and Management Optimization, 21(10), 6167-6189.
ISSN1547-5816
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=105015738609&origin=inward
URIhttp://hdl.handle.net/10576/68433
AbstractReentrant or partial reentrant widely exists in practical manufacturing scenarios, which is rarely considered in literature. This work investigates a distributed flow-shop scheduling problem with partial reentrant constraint (DFSP PR). The objective is to minimize the maximum completion time (makespan). First, a mathematical model for the DFSP PR is developed, which integrates the characteristics of partial reentrant and distributed manufacturing scenarios. Second, three meta-heuristics are employed and enhanced to solve the concerned problems. The Nawaz-Enscore-Ham (NEH) heuristic is used to initialize the population. Based on the nature of the DFSP PR, six local search strategies are designed to improve the convergence efficiency of meta-heuristics. Third, two cutting-edge reinforcement learning algorithms, Q-learning and state-action-reward-state’-action’ (SARSA), are integrated into the meta-heuristics to select the most effective local search strategy during iterations. Finally, comprehensive experiments on 48 benchmark instances with varying scales demonstrate the effectiveness of the proposed approaches, where Q-learning and SARSA significantly improving the performance of the meta-heuristics.
Languageen
PublisherAmerican Institute of Mathematical Sciences
SubjectDistributed scheduling
flow-shop
meta-heuristics
partial reentrant
Q-learning
SARSA
TitleTwo reinforcement learning strategies based meta-heuristics for scheduling partial reentrant distributed flow-shops.
TypeArticle
Pagination6167-6189
Issue Number10
Volume Number21
dc.accessType Full Text


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