Swarm Intelligent Algorithm For Re-entrant Hybrid Flow shop Scheduling Problems
In order to solve Re-entrant Hybrid Flowshop (RHFS) scheduling problems and establish simulations and processing models, this paper uses Wolf Pack Algorithm (WPA) as global optimization. For local assignment, it takes minimum remaining time rule. Scouting behaviors of wolf are changed in former opti...
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Zusammenfassung: | In order to solve Re-entrant Hybrid Flowshop (RHFS) scheduling problems and
establish simulations and processing models, this paper uses Wolf Pack
Algorithm (WPA) as global optimization. For local assignment, it takes minimum
remaining time rule. Scouting behaviors of wolf are changed in former
optimization by means of levy flight, extending searching ranges and increasing
rapidity of convergence. When it comes to local extremum of WPA, dynamic
regenerating individuals with high similarity adds diversity. Hanming distance
is used to judge individual similarity for increased quality of individuals,
enhanced search performance of the algorithm in solution space and promoted
evolutionary vitality.A painting workshop in a bus manufacture enterprise owns
typical features of re-entrant hybrid flowshop. Regarding it as the algorithm
applied target, this paper focus on resolving this problem with LDWPA (Dynamic
wolf pack algorithm based on Levy Flight). Results show that LDWPA can solve
re-entrant hybrid flowshop scheduling problems effectively. |
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DOI: | 10.48550/arxiv.1901.09660 |