Differential evolution algorithm for solving RALB problem using cost- and time-based models

被引:0
作者
J. Mukund Nilakantan
Izabela Nielsen
S. G. Ponnambalam
S. Venkataramanaiah
机构
[1] Aalborg University,Department of Mechanical and Manufacturing Engineering
[2] Monash University Malaysia,Advanced Engineering Platform and School of Engineering
[3] Indian Institute of Management Lucknow,undefined
来源
The International Journal of Advanced Manufacturing Technology | 2017年 / 89卷
关键词
Robotic assembly line balancing; Assembly line cost; Cycle time; Differential evolution;
D O I
暂无
中图分类号
学科分类号
摘要
Assembly process is one of the important aspects in manufacturing industries. Industries are extensively using advanced technologies in assembly lines recently such as robots instead of human labor. Cost associated with human labor such as wages, training, safety, and employee management are eliminated with the help of robots. Investments on assembly lines are cost intensive, and industries continuously need to maximize their utilization. In this paper, a cost-based robotic assembly line balancing (RALB) problem with an objective of minimizing assembly line cost and cycle time is addressed. Moreover, there is no research reported on concurrently optimizing cycle time and assembly line cost for a robotic assembly line system to date. The objective of this paper is to propose models with dual focus on time and cost to minimize the cycle time and total assembly line cost simultaneously. Time-based model with the primary focus to optimize cycle time and the cost-based model with the primary focus to optimize total assembly line cost are developed. Due to NP-hard nature, differential evolution (DE) is the algorithm used to solve the RALB problem. Straight and U-shaped robotic assembly line problems are solved using the proposed algorithm, and the detailed comparisons of the results obtained are presented. While comparing straight and U-shaped RALB problems, assembly line cost and cycle time obtained by U-shaped RALB problems are better than the straight RALB problems. The proposed models have significant managerial implications, and these have been discussed in detail.
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页码:311 / 332
页数:21
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