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A Novel General Variable Neighborhood Search through Q-Learning for No-Idle Flowshop Scheduling

机译:通过Q学习进行无空闲Flowshop调度的新型通用变量邻域搜索

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In this study, a novel general variable neighborhood search through Q-learning (GVNS-QL) algorithm is proposed to solve the no-idle flowshop scheduling problem with the makespan objective. In the outer loop of the GVNS-QL, insertion, and exchange operators are used to shaking the permutation. On the other hand, in the inner loop of variable neighborhood descent procedure, variable iterated greedy and variable block insertion heuristic algorithms are employed with two effective insertion local search procedures. The proposed GVNS-QL defines the parameters of the algorithm using a Q-learning mechanism. The developed GVNS-QL algorithm is compared with the traditional iterated greedy (IG) algorithm using the well-known benchmark set. The comprehensive computational experiments show that the GVNS-QL outperforms the traditional IG algorithm. The results of the IG and GVNS-QL algorithms are also compared with the current best-known solutions reported in the literature. The computational results show that the proposed GVNS-QL algorithm improves the current best-known solutions for 104 out of 250 instances.
机译:在本研究中,提出了一种通过Q学习(GVNS-QL)算法的新的一般变量邻域搜索,以解决Mapespan目标的No-Idle Flowshop调度问题。在GVNS-QL,插入和交换机操作员的外环中用于摇动置换。另一方面,在可变邻域下降过程的内循环中,可变迭代的贪婪和可变块插入启发式算法用于两个有效的插入本地搜索过程。所提出的GVNS-QL使用Q学习机制定义了算法的参数。使用众所周知的基准集合将开发的GVNS-QL算法与传统的迭代贪婪(IG)算法进行比较。综合计算实验表明,GVNS-QL优于传统的IG算法。 IG和GVNS-QL算法的结果也与文献中报告的当前最着名的解决方案进行了比较。计算结果表明,所提出的GVNS-QL算法可提高250个实例中的104个最佳已知的解决方案。

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