Genetic Algorithms for Solving Scheduling Problems in Flexible Manufacturing Cells
نویسنده
چکیده
In this paper, scheduling problems in Flexible Manufacturing Cells (FMC) are studied. The scheduling objective is to minimize the makespan. We used a genetic algorithm (GA) for solving the optimization scheduling problem. We have developed one FMC with industrial characteristics with the objective of studying scheduling problems in these types of manufacturing systems (single machine scheduling, flow-shop scheduling and job-shop scheduling). The practical results obtained from the FMC for the various scheduling problems show the efficiency of GA in solving these problems. Key-Words: Genetic Algorithm, Scheduling, single machine, Flow-shop, Job-shop and Flexible Manufacturing Cell.
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