A global-local neighborhood search algorithm and tabu search for flexible job shop scheduling problem
October 23, 2020 ยท Declared Dead ยท ๐ PeerJ Computer Science
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Authors
Juan Carlos Seck-Tuoh-Mora, Nayeli J. Escamilla-Serna, Joselito Medina-Marin, Norberto Hernandez-Romero, Irving Barragan-Vite, Jose R. Corona-Armenta
arXiv ID
2010.12702
Category
cs.NE: Neural & Evolutionary
Citations
22
Venue
PeerJ Computer Science
Last Checked
4 months ago
Abstract
The Flexible Job Shop Scheduling Problem (FJSP) is a combinatorial problem that continues to be studied extensively due to its practical implications in manufacturing systems and emerging new variants, in order to model and optimize more complex situations that reflect the current needs of the industry better. This work presents a new meta-heuristic algorithm called GLNSA (Global-local neighborhood search algorithm), in which the neighborhood concepts of a cellular automaton are used, so that a set of leading solutions called "smart_cells" generates and shares information that helps to optimize instances of FJSP. The GLNSA algorithm is complemented with a tabu search that implements a simplified version of the Nopt1 neighborhood defined in [1] to complement the optimization task. The experiments carried out show a satisfactory performance of the proposed algorithm, compared with other results published in recent algorithms and widely cited in the specialized bibliography, using 86 test problems, improving the optimal result reported in previous works in two of them.
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