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首页> 外文期刊>Soft Computing - A Fusion of Foundations, Methodologies and Applications >Bi-objective parallel machines scheduling with sequence-dependent setup times using hybrid metaheuristics and weighted min–max technique
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Bi-objective parallel machines scheduling with sequence-dependent setup times using hybrid metaheuristics and weighted min–max technique

机译:双目标并行机使用混合元启发法和加权最小-最大技术调度与序列相关的建立时间

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摘要

In the literature of multi-objective problem, there are different algorithms to solve different optimization problems. This paper presents a min–max multi-objective procedure for a dual-objective, namely make span, and sum of the earliness and tardiness of jobs in due window machine scheduling problems, simultaneously. In formulation of min–max method when this method is combined with the weighting method, the decision maker can have the flexibility of mixed use of weights and distance parameter to yield a set of Pareto-efficient solutions. This research extends the new hybrid metaheuristic (HMH) to solve parallel machines scheduling problems with sequence-dependent setup time that comprises three components: an initial population generation method based on an ant colony optimization (ACO), a simulated annealing (SA) as an evolutionary algorithm employs certain probability to avoid becoming trapped in a local optimum, and a variable neighborhood search (VNS) which involves three local search procedures to improve the population. In addition, two VNS-based HMHs, which are a combination of two methods, SA/VNS and ACO/VNS, are also proposed to solve the addressed scheduling problems. A design of experiments approach is employed to calibrate the parameters. The non-dominated sets obtained from HMH and two best existing bi-criteria scheduling algorithms are compared in terms of various indices and the computational results show that the proposed algorithm is capable of producing a number of high-quality Pareto optimal scheduling plans. Aside, an extensive computational experience is carried out to analyze the different parameters of the algorithm.
机译:在多目标问题的文献中,有不同的算法可以解决不同的优化问题。本文提出了双目标的最小-最大多目标程序,即同时生成和在适当的窗口机器调度问题中作业的早期性和延误性之和。当最小-最大方法与权重方法结合使用时,决策者可以灵活地混合使用权重和距离参数来产生一组帕累托有效解。这项研究扩展了新的混合元启发式算法(HMH),以解决与序列相关的建立时间的并行机调度问题,该问题包括三个组成部分:基于蚁群优化(ACO)的初始种群生成方法,作为模拟种群的模拟退火(SA)进化算法利用一定的概率来避免陷入局部最优中,而可变邻域搜索(VNS)涉及三个局部搜索过程以提高总体。此外,还提出了两个基于VNS的HMH,它们是SA / VNS和ACO / VNS两种方法的组合,以解决已解决的调度问题。设计了一种实验方法来校准参数。比较了从HMH得到的非支配集和现有的两种最佳双准则调度算法,计算结果表明,该算法能够生成许多高质量的Pareto最优调度方案。另外,进行了大量的计算经验来分析算法的不同参数。

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