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Application of the Hybrid Genetic Algorithm to Combinatorial Optimization Problems in Flow-shop Scheduling

机译:混合遗传算法在流水车间调度组合优化问题中的应用

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Production scheduling has been recognized as common but challenging combinatorial problems. Because of their complexity, recent research has turned to genetic algorithms to address such problems. Although genetic algorithms have been proven to facilitate the entire space search, they lack in fine-tuning capability for obtaining the global optimum. Therefore, in this study a hybrid genetic algorithm was developed for optimization. Scheduling problems often involve more than one criterion and therefore require multicriteria analysis. Therefore a multicriteria flowshop scheduling problem with setup times is considered. The objective function of the problem is minimization of the weighted sum of total completion time, makespan, maximum tardiness and maximum earliness. An integer programming model is developed for the problem which belongs to NP-hard class. According to computational results, the hybrid genetic algorithm proposed is effective in finding problem solutions.
机译:生产调度已被认为是常见但具有挑战性的组合问题。由于它们的复杂性,最近的研究转向了遗传算法来解决这些问题。尽管遗传算法已被证明可以促进整个空间的搜索,但是它们缺乏获得全局最优值的微调功能。因此,在这项研究中,开发了一种混合遗传算法进行优化。计划问题通常涉及多个标准,因此需要进行多标准分析。因此,考虑了带有建立时间的多准则流水车间调度问题。该问题的目标功能是使总完成时间,制造期,最大延误和最大提前期的加权总和最小化。针对该问题开发了一个整数规划模型,该模型属于NP-hard类。根据计算结果,提出的混合遗传算法可以有效地解决问题。

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