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FMS scheduling with knowledge based genetic algorithm approach

机译:基于知识的遗传算法的FMS调度

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摘要

In this paper a complex scheduling problem in flexible manufacturing system (FMS) has been addressed with a novel approach called knowledge based genetic algorithm (KBGA). The literature review indicates that meta-heuristics may be used for combinatorial decision-making problem in FMS and simple genetic algorithm (SGA) is one of the meta-heuristics that has attracted many researchers. This novel approach combines KB (which uses the power of tacit and implicit expert knowledge) and inherent quality of SGA for searching the optima simultaneously. In this novel approach, the knowledge has been used on four different stages of SGA: initialization, selection, crossover, and mutation. Two objective functions known as throughput and mean flow time, have been taken to measure the performance of the FMS. The usefulness of the algorithm has been measured on the basis of number of generations used for achieving better results than SGA. To show the efficacy of the proposed algorithm, a numerical example of scheduling data set has been tested. The KBGA was also tested on 10 different moderate size of data set to show its robustness for large sized problems involving flexibility (that offers multiple options) in FMS.
机译:在本文中,已经通过一种称为基于知识的遗传算法(KBGA)的新方法解决了柔性制造系统(FMS)中的复杂调度问题。文献综述表明,元启发法可能被用于FMS中的组合决策问题,而简单遗传算法(SGA)是吸引了许多研究人员的元启发法之一。这种新颖的方法结合了KB(利用隐性和隐式专家知识的力量)和SGA的固有质量来同时搜索最优值。在这种新颖的方法中,已将知识用于SGA的四个不同阶段:初始化,选择,交叉和变异。已经采用了两个目标功能,即吞吐量和平均流动时间来衡量FMS的性能。该算法的有效性已根据用于获得比SGA更好的结果的世代数进行了衡量。为了显示所提出算法的有效性,已经对调度数据集的数值示例进行了测试。 KBGA还对10种不同大小的数据集进行了测试,以显示其对于FMS中涉及灵活性(提供多种选择)的大型问题的鲁棒性。

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