智能制造中的柔性作业车间调度

Mohamed Ahmed Awad, Hend Mohamed Abd-Elaziz
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引用次数: 0

摘要

数字化制造使生产调度问题变得更加复杂。经典的柔性作业车间调度(FJSSP)由于可选择的工艺规划能够在一个作业的不同路径下加工相同的零件而获得了动态性。单作业是一项路由处理操作上完成的一个排序功能。特性优先级反过来又限制了作业路由的多样性。问题是NP-hard复杂性。因此,本研究将重点放在特征优先级的正确性上,以减少FJSSP优化的耗时。采用两阶段元启发式模型,考虑加工时间跨度和粒度损失,优化调度。在调度路线预测中,机器状态也起着至关重要的作用。在实验结果中,将改进的方法与基于经典遗传算法的方法进行了比较,以说明各参数的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible Job-Shop Scheduling in Smart Manufacturing
Production scheduling problems encountered more complexity with the digital manufacturing. Classic Flexible Job Shop Scheduling (FJSSP) gained dynamic manner due to the alternative process planning abled to machine the same part with different routing of one job. A single job is a routing processing operations done on a sequencing features. Features precedence in turn constrains the job routing diversity. The problem is as NP-hard complexity. Hence, this study concentrates on correctness the features precedence to be able to decrease the consuming time of optimization for FJSSP. The study deployed a two stage meta-heuristic model to optimize the scheduling paying attention to the processing make span and granularity penalty. The machine state as well plays a crucial rule within scheduling routing prediction. A comparison between the modified approach and the classic Genetic Algorithms (GA) based is introduced within experimental results to demonstrate each parameter effect.
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