Hybrid multiobjective genetic algorithms for integrated dynamic scheduling and routing of jobs and automated-guided vehicle (AGV) in flexible manufacturing systems (FMS) environment

被引:4
|
作者
Umar Ali Umar
M. K. A. Ariffin
N. Ismail
S. H. Tang
机构
[1] Universiti Putra Malaysia,Department of Mechanical and Manufacturing Engineering
关键词
Flexible manufacturing system (FMS); Automatic guided vehicle (AGV); Hybrid genetic algorithm (HGA); Multiobjective genetic algorithm (MOGA); Integrated scheduling; Production planning; Machine learning; AGV routing; AGV dispatching;
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摘要
The paper presents an algorithm for integrated scheduling, dispatching, and conflict-free routing of jobs and AGVs in FMS environment using a hybrid genetic algorithm. The algorithm generates an integrated schedule and detail routing paths while optimizing makespan, AGV travel time, and penalty cost due to jobs tardiness and delay as a result of conflict avoidance. The multi-objective fitness function use adaptive weight approach to assign weights to each objective for every generation based on objective improvement performance. Fuzzy expert system is used to control genetic operators using the overall population performance improvements of the last two previous generations. Computational experiments was conducted on the developed algorithm coded in Matlab to test the effectiveness of the algorithm. Integrated scheduling of jobs in FMS which are in synchrony with AGV dispatching, scheduling, and routing proved to ensure the feasibility and effectiveness of all the solutions of the integrated constituent elements.
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页码:2123 / 2141
页数:18
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