A Cellular-rearranging of Population in Genetic Algorithms to Solve Assembly-Line Balancing Problem

Hossein Rajabalipour Cheshmehgaz, Mohammd Ishak Desa, Farahnaz Kazemipour
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引用次数: 3

Abstract

Assembly line balancing problem (ALBP) is the allocating of assembly tasks to workstations with consideration of some criteria such as time and the number of workstations. Due to the complexity of ALB, finding the optimum solutions in terms of the number of workstations in the assembly line needs suitable meta-heuristic techniques. Genetic algorithms have been used to a large extent. Due to converging to the local optimal solutions to the most genetic algorithms, the balanced exploration of the new area of search space and exploitation of good solutions by this kind of algorithms as a good way can be sharpened with some meta-heuristic. In this paper, the modified cellular (grid) rearranging-population structure is developed. The individuals of the population are located on cells according to the hamming distance value among individuals as neighbours before regenerations and a family of cellular genetic algorithms (CGAs) is defined. By using the cellular structure and the rearrangements, some of the family members can find better solutions compared with others in the same iterations, and they behave much more reasonably in order to acquire the solution in terms of the number of workstations and the smoothly balanced task assignment on criteria conditions.
用遗传算法求解装配线平衡问题的群体细胞重排
装配线平衡问题(ALBP)是在考虑时间和工作站数量等条件下,将装配任务分配给工作站的问题。由于ALB的复杂性,寻找装配线上工作站数量的最优解需要合适的元启发式技术。遗传算法在很大程度上得到了应用。由于大多数遗传算法收敛于局部最优解,这类算法可以通过一些元启发式方法来平衡探索新的搜索空间领域和利用好的解。本文提出了一种改进的元胞(网格)重排-种群结构。根据再生前相邻个体之间的汉明距离值,将种群中的个体定位在细胞上,并定义了一类细胞遗传算法。通过使用细胞结构和重新排列,在相同的迭代中,一些家庭成员可以找到比其他家庭成员更好的解决方案,并且在工作站数量和标准条件下平滑平衡任务分配方面表现得更加合理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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