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Simultaneous solving of balancing and sequencing problems in mixed-model assembly line systems

机译:同时解决混合模型装配线系统中的平衡和排序问题

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摘要

Recently, the mixed-model assembly line (MMAL) has been widely studied by many researchers. In fact, there are two basic problems, namely balancing and sequencing problems, which have been investigated in a lot of studies separately, but few researchers have solved both problems simultaneously. Regarding this, the best results in minimising total utility work have been gained by developing a co-evolutionary genetic algorithm (Co-GA) so far. This paper provides a mixed-integer linear programming (MILP) model to jointly solve the problems. Because of NP-hardness, an evolution strategies (ES) algorithm is presented and evaluated by the same test problems in the literature. Two main hypotheses, namely simultaneous search and feasible search, are tested in the proposed algorithm to improve the quality of solutions. To calibrate the algorithm, a Taguchi design of experiments is employed. The proposed ES is compared with the modified version of Co-GA and the MILP model results. According to numerical experiments and statistical proving, the proposed ES outperformed the modified Co-GA from two points of view: the objective function and the computational time. Additionally, the meta-heuristic algorithms are examined in terms of other well-known criteria in MMAL. Finally, the contribution of each hypothesis in accounting for this superiority is analysed.
机译:最近,许多研究人员对混合模型装配线(MMAL)进行了广泛的研究。实际上,有两个基本问题,即平衡问题和排序问题,已经在许多研究中分别进行了研究,但很少有研究人员同时解决这两个问题。关于这一点,到目前为止,通过开发协同进化遗传算法(Co-GA),已获得了使总效用最小化的最佳结果。本文提供了一个混合整数线性规划(MILP)模型来共同解决这些问题。由于NP硬度,提出了一种进化策略(ES)算法,并通过文献中的相同测试问题对其进行了评估。在提出的算法中测试了两个主要假设,即同时搜索和可行搜索,以提高解的质量。为了校准算法,采用了Taguchi设计的实验。将拟议的ES与Co-GA的修改版本和MILP模型结果进行比较。根据数值实验和统计证明,从目标函数和计算时间两方面来看,拟议的ES优于改进的Co-GA。此外,根据MMAL中其他众所周知的标准检查了元启发式算法。最后,分析了每种假设在解释这种优势方面的作用。

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