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A genetic algorithm with sub-indexed partitioning genes and its application to production scheduling of parallel machines

机译:具有子索引划分基因的遗传算法及其在并行机生产调度中的应用

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Production scheduling seeks optimal combination of short manufacturing time, stable inventory, balanced human and machine utilization rate, and short average customer waiting time. Since the problem in general has been proven as NP-hard, we focus on suboptimal scheduling solutions for parallel flow shop machines where jobs are queued in a bottleneck stage. A Genetic Algorithm with Sub-indexed Partitioning genes (GASP) is proposed to allow more flexible job assignments to machines. Our fitness function considers tardiness, earliness, and utilization rate related variable costs to reflect real requirements. A premature convergence bounce is added to traditional genetic algorithms to increase permutation diversity. Finally, a production scheduling system for an electronic plant based on GASP is implemented and illustrated through real production data. The proposed GASP has demonstrated the following advantages: (1) the solutions from GASP are better and with smaller deviations than those from heuristic rules and genetic algorithms with identical partitioning genes; (2) the added premature convergence bounce helps obtain better solutions with smaller deviations; and (3) the consideration of variable costs in the fitness function helps achieve better performance indicators.
机译:生产计划寻求短生产时间,稳定的库存,平衡的人机利用率和较短的平均客户等待时间的最佳组合。由于一般情况下该问题已被证明是NP难题,因此我们将重点放在并行流水线机器的次优调度解决方案上,在此阶段,作业在瓶颈阶段排队。提出了带有子索引分区基因(GASP)的遗传算法,以允许对机器进行更灵活的作业分配。我们的适应度函数会考虑迟到性,早期性和与利用率相关的可变成本,以反映实际需求。过早的收敛反弹被添加到传统的遗传算法中,以增加排列多样性。最后,通过实际生产数据实现并举例说明了基于GASP的电子工厂生产调度系统。提出的GASP具有以下优点:(1)与具有相同分配基因的启发式规则和遗传算法相比,GASP的解决方案更好,偏差更小; (2)增加的过早收敛反弹有助于以较小的偏差获得更好的解决方案; (3)在适应度函数中考虑可变成本有助于实现更好的绩效指标。

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