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Learning per-machine linear dispatching rule for heterogeneous multi-machines control

Authors
Kim, NamyongSTEPHANE, BARDEBae, KiwookShin, Hayong Send mail to Shin H.
Issue Date
Jun-2021
Publisher
Taylor & Francis
Keywords
dispatching rule; gradient-based Evolutionary Strategy; hyper-heuristics; per-machine rule; re-entrant shop; Scheduling
Citation
International Journal of Production Research, v.61, no.1, pp 162 - 182
Pages
21
Indexed
SCIE
SCOPUS
Journal Title
International Journal of Production Research
Volume
61
Number
1
Start Page
162
End Page
182
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/113511
DOI
10.1080/00207543.2021.1942283
ISSN
0020-7543
1366-588X
Abstract
This paper proposes a per-machine linear dispatching rule learning approach to improve the scheduling of re-entrant flow shop such as semiconductor fab. Finding an optimal schedule of a complex manufacturing system is intractable; hence, a dispatching rule as a heuristic approach is widely used in actual practice. Also, to develop a good dispatching rule, an automated methodology for developing heuristics, also known as a hyper-heuristic, has been studied extensively. However, most of the literature has focused on finding a single-sophisticated dispatching rule, in which every machine uses the same rule. Such an approach often shows suboptimal performance when the optimal dispatching rule is different on each machine. To solve this problem, we introduce a simple and effective per-machine dispatching rule learning approach, in which each machine has one linear dispatching rule that is optimised by the Gradient-based Evolutionary Strategy (GES). This method is sample-efficient and can be applied to non-differentiable objective functions such as average Cycle Time. The proposed approach was mainly compared to two popular methods based on Genetic Programming (GP) and the Genetic Algorithm (GA) on a four-station and eight-machine re-entrant flow shop. Numerical results show that the proposed approach outperforms widely used methods.
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STEPHANE, BARDE
ERICA 공학대학 (DEPARTMENT OF INDUSTRIAL & MANAGEMENT ENGINEERING)
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