Real options approach for a mixed-model assembly line sequencing problem

被引:0
作者
Masoud Rabbani
Alireza Rahimi-Vahed
Seyed Ali Torabi
机构
[1] University of Tehran,Department of Industrial Engineering, Faculty of Engineering
来源
The International Journal of Advanced Manufacturing Technology | 2008年 / 37卷
关键词
Real options; Product-mix flexibility; Mixed-model assembly line; Memetic algorithm; Genetic algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
Mixed-model assembly lines are widely used in manufacturing. This can be attributed to increased product variety and potential just-in-time (JIT) benefits obtained by applying mixed-model assembly lines. Because of market demand volatility, the flexibility of such a line is increasingly becoming more important and, consequently, determining an accurate sequence is becoming more complex. In this paper, first, we use the real options approach to evaluate one specific type of flexibility, i.e., product-mix flexibility. This methodology is applied to determine the products’ quantity that must be satisfied by the mixed-model assembly line. Then, in order to determine a desired sequence, we consider three objectives simultaneously: (1) total utility work cost, (2) total production rate variation cost, and (3) total set-up cost. A nonlinear zero–one model is developed for the problem whose objective function is a weighted sum of the above-mentioned objectives. Moreover, two efficient metaheuristics, i.e., a genetic algorithm (GA) and a memetic algorithm (MA), are proposed. These solution methods are compared with the optimal solution method using Lingo 6 software over a set of randomly generated test problems. The computational results reveal that the proposed memetic algorithm performs better than the proposed genetic algorithm.
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页码:1209 / 1219
页数:10
相关论文
共 52 条
[1]  
Miltenburg J(1989)Level schedules for mixed-model assembly lines in just-in-time production systems Manage Sci 35 192-207
[2]  
Miltenburg J(1990)A dynamic programming algorithm for scheduling mixed-model, just-in-time production systems Math Comp Model 13 57-66
[3]  
Steiner G(1991)Sequencing JIT mixed-model assembly lines Manage Sci 37 901-904
[4]  
Yeomans S(1991)Sequencing to minimize work overload in assembly lines with product options Manage Sci 37 572-586
[5]  
Inman RR(1992)An analytic framework for sequencing mixed model assembly lines Int J Prod Res 30 35-48
[6]  
Bulfin RL(1991)Developing production schedules which balance part usage and smooth production loads in just-in-time production systems Nav Res Logist 38 893-910
[7]  
Yano CA(1994)Sequencing mixed-model assembly lines to level parts usage and minimize line length Int J Prod Res 32 2431-2454
[8]  
Rachamadugu R(1998)A genetic algorithm for multiple objective sequencing problems in mixed model assembly lines Comput Oper Res 25 675-690
[9]  
Bard JF(1998)JIT sequencing for mixed-model assembly lines with setups using tabu search Prod Plan Control 9 504-510
[10]  
Dar-El EM(2001)Bicriteria sequencing methods for the mixed-model assembly line in just-in-time production systems Eur J Oper Res 131 188-207