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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Multi-objective artificial bee colony algorithm for simultaneous sequencing and balancing of mixed model assembly line
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Multi-objective artificial bee colony algorithm for simultaneous sequencing and balancing of mixed model assembly line

机译:混合模型装配线同时排序和平衡的多目标人工蜂群算法

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摘要

In recent years, mixed model assembly lines are gaining popularity to produce a variety of models on the single-model assembly lines. Mixed model assembly lines have two types of problems which include sequencing of different models on the line and balancing of assembly line. These two problems collectively affect the performance of assembly lines, and therefore, current research is aimed to balance the workload of different models on each station, to reduce the deviation of workload of a station from the average workload of all the stations and to minimize the total flow time of models on different stations simultaneously. A multi-objective artificial bee colony (multi-ABC) algorithm for simultaneous sequencing and balancing problem with Pareto concepts and local search mechanism is presented. Two kinds of mixed model assembly line problems are analysed. For the first and second problems, each model task time data and precedence relation data are taken from standard assembly line problems, from operation research library (ORL) and from a truck manufacturing company in China, respectively. Both problems are solved using the proposed multi-ABC algorithm on two different demand scenarios of models, and the results are compared against the results obtained from a famous algorithm in the literature, i.e. non-dominated sorting genetic algorithm (NSGA) II. Computational results of the selected problems indicate that the proposed multi-ABC algorithm outperforms NSGA II and gives better Pareto solutions for the selected problems on different demand scenarios of models.
机译:近年来,混合模型装配线越来越受欢迎,可以在单模型装配线上生产各种模型。混合模型装配线存在两种类型的问题,包括生产线上不同模型的排序和装配线的平衡。这两个问题共同影响装配线的性能,因此,当前的研究旨在平衡每个工位上不同模型的工作量,以减少工位的工作量与所有工位的平均工时之间的偏差,并最大程度地减少装配工时。模型在不同工作站上的总流动时间同时进行。提出了一种基于Pareto概念和局部搜索机制的同时排序和平衡问题的多目标人工蜂群算法。分析了两种混合模型装配线问题。对于第一个和第二个问题,每个模型任务时间数据和优先级关系数据分别来自标准装配线问题,运营研究库(ORL)和中国的卡车制造公司。使用提出的multi-ABC算法在两种不同的模型需求场景下解决了这两个问题,并将结果与​​文献中从著名算法即非支配排序遗传算法(NSGA)II获得的结果进行了比较。所选问题的计算结果表明,所提出的multi-ABC算法优于NSGA II,并针对模型不同需求场景下的所选问题提供了更好的Pareto解。

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