基于遗传算法的多工位并行调度

D. Davendra, F. Hermann, M. Bialic-Davendra
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引用次数: 1

摘要

本文提出了一种用遗传算法求解具有多站点同时加载的时滞约束流车间问题的方法。这个基于工业的问题是从过滤篮生产线建模的,通常使用确定性算法来解决。本文采用了一种进化的方法来改善延迟性,并说明了更好的一致性结果。在6个测试用例中随机生成了总共120个不同的问题实例,以模拟工业实践中出现的情况,并使用22种不同的GA场景来解决。这些结果与先进先出(FIFO)、Raghu和Rajendran (RR)、最短处理时间(SPT)和Slack四种基于优先级规则的标准基准算法进行了比较。从所有获得的结果中,发现GA在所有问题实例中始终优于所有比较算法。
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Scheduling Tardiness Constrained Flow Shop with Simultaneously Loaded Stations Using Genetic Algorithm
This paper describes an approach for solving a tardiness constrained flow shop with simultaneously loaded stations using a Genetic Algorithm (GA). This industrial based problem is modeled from a filter basket production line and is generally solved using deterministic algorithms. An evolutionary approach is utilized in this paper to improve the tardiness and illustrate better consistent results. A total of 120 different problem instances in six test cases are randomly generated to mimic conditions, which occur at industrial practice and solved using 22 different GA scenarios. These results are compared with four standard benchmark priority rule based algorithms of First in First Out (FIFO), Raghu and Rajendran (RR), Shortest Processing Time (SPT) and Slack. From all the obtained results, GA was found to consistently outperform all compared algorithms for all the problem instances.
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