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A Novel Genetic Simulated Annealing Algorithm for No-wait Hybrid Flowshop Problem with Unrelated Parallel Machines

机译:一种新的无关平行机的无等待混合流动问题的新型遗传模拟退火算法

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This paper studies the problem of scheduling N jobs in a hybrid flowshop with unrelated parallel machines at each stage. Considering the practical application of the presented problem, no-wait constraints and the objective function of total flowtime are included in the scheduling problem. A mathematical model is constructed and a novel genetic simulated annealing algorithm so-called GSAA are developed to solve this problem. In the algorithm, firstly a modified NEH algorithm is proposed to obtain the initial population. A two-dimensional matrix encoding scheme for scheduling solutions is designed and an insertion-translation approach are employed for decoding in order to meet no-wait constraints. Afterwards, to avoid GA premature and enhance search ability, an adaptive adjustment strategy is imposed on the crossover and mutation operators. In addition, a SA procedure is implemented for some better individuals from the GA solutions to complete re-optimization, where five neighborhood search structures are constructed including job based exchange, gene based exchange, gene based insertion, job based mutation, and gene based mutation. Finally, various simulation experiments in two scales of small-medium and large are established. Computational results show that the presented algorithm performs much more effectively compared with several heuristic algorithms reported in the literature.
机译:本文研究了在每个阶段的无关的平行机中调度 n工作的问题。考虑到所呈现的问题,不等待约束和总流量时间的目标函数都包含在调度问题中。构建数学模型,开发了一种新的遗传模拟退火算法以解决这个问题。在算法中,提出了一种修改的NEH算法以获得初始群体。设计用于调度解决方案的二维矩阵编码方案,并采用插入翻译方法来解码,以便满足不等待的约束。之后,为了避免GA过早和增强搜索能力,对交叉和突变运算符施加自适应调整策略。此外,对于来自GA解决方案的一些更好的个体来实现SA过程以完成重新优化,其中构建了五个邻域搜索结构,包括作业的交换,基于基于基因的交换,基因基因的插入,基于作业的突变和基因基因突变。最后,建立了两种小型和大型尺度的各种仿真实验。计算结果表明,与文献中报道的几种启发式算法相比,呈现的算法比较更有效。

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