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Hybrid genetic algorithm for permutation flowshop scheduling problems with total flowtime minimization
Authors:Yi Zhang  Xiaoping Li  Qian Wang
Institution:School of Computer Science and Engineering, Southeast University, 210096 Nanjing, PR China; Key Laboratory of Computer Network and Information Integration, Southeast University, Ministry of Education, PR China
Abstract:In this paper, a HGA (hybrid genetic algorithm) is proposed for permutation flowshop scheduling problems (PFSP) with total flowtime minimization, which are known to be NP-hard. One of the chromosomes in the initial population is constructed by a suitable heuristic and the others are yielded randomly. An artificial chromosome is generated by a weighted simple mining gene structure, with which a new crossover operator is presented. Additionally, two effective heuristics are adopted as local search to improve all generated chromosomes in each generation. The HGA is compared with one of the most effective heuristics and a recent meta-heuristic on 120 benchmark instances. Experimental results show that the HGA outperforms the other two algorithms for all cases. Furthermore, HGA obtains 115 best solutions for the benchmark instances, 92 of which are newly discovered.
Keywords:Genetic algorithm  Permutation flowshop  Total flowtime  Scheduling
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