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The hybrid heuristic genetic algorithm for job shop scheduling

Scheduling for the job shop is very important in both fields of production management and combinatorial optimization. However, it is quite difficult to achieve an optimal solution to this problem with traditional optimization methods owing to the high computational complexity (NP-hard). Genetic algo...

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Published in:Computers & industrial engineering 2001-07, Vol.40 (3), p.191-200
Main Authors: Zhou, Hong, Feng, Yuncheng, Han, Limin
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Language:English
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description Scheduling for the job shop is very important in both fields of production management and combinatorial optimization. However, it is quite difficult to achieve an optimal solution to this problem with traditional optimization methods owing to the high computational complexity (NP-hard). Genetic algorithms (GA) have been proved to be effective for a variety of situations, including scheduling and sequencing. Unfortunately, its efficiency is not satisfactory. In order to make GA more efficient and practical, the knowledge relevant to the problem to be solved is helpful. In this paper, a kind of hybrid heuristic GA is proposed for problem n/ m/ G/ C max, where the scheduling rules, such as shortest processing time (SPT) and MWKR, are integrated into the process of genetic evolution. In addition, the neighborhood search technique (NST) is adopted as an auxiliary procedure to improve the solution performance. The new algorithm is proved to be effective and efficient by comparing it with some popular methods, i.e. the heuristic of neighborhood search, simulated annealing (SA), and traditional GA.
doi_str_mv 10.1016/S0360-8352(01)00017-1
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identifier ISSN: 0360-8352
ispartof Computers & industrial engineering, 2001-07, Vol.40 (3), p.191-200
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1879-0550
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source ScienceDirect Freedom Collection 2022-2024
subjects Algorithms
Applied sciences
Combinatorial optimization
Evolution & development
Exact sciences and technology
Flows in networks. Combinatorial problems
Genetic algorithm
Genetic algorithms
Heuristic
Heuristics
Job shop scheduling
Job shops
Operational research and scientific management
Operational research. Management science
Optimization
Production management
Production scheduling
Scheduling
Scheduling, sequencing
Studies
title The hybrid heuristic genetic algorithm for job shop scheduling
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