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A new approach based on Ant Colony Optimization (ACO) to determine the supply chain (SC) design for a product mix
Zhao, FuQing1,2; Tang, JianXin1; Yang, YaHong3
刊名Journal of Computers
2012
卷号7期号:3页码:736-742
关键词Artificial intelligence Hormones Manufacture Matrix algebra Multiobjective optimization Product design Supply chains Ant colonies Ant Colony Optimization (ACO) Changing business environment Meta heuristics Optimisation problems Preferred solutions Probabilistic decisions Supply chain design
ISSN号1796203X
DOI10.4304/jcp.7.3.736-742
英文摘要Manufacturing supply chain(SC) faces changing business environment and various customer demands. Pareto Ant Colony Optimisation (P-ACO) in order to obtain the non-dominated set of different SC designs was utilized as the guidance for designing manufacturing SC. PACO explores the solution space on the basis of applying the Ant Colony Optimisation algorithm and implementing more than one pheromone matrix, one for every objective. The SC design problem has been addressed by using Pareto Ant Colony Optimisation in which two objectives are minimised simultaneously. There were tested two ways in which the quantity of pheromones in the PM is incremented. In the SPM, the pheromone increment is a function of the two objectives, cost and time, while in MPM the pheromone matrix is divided into two pheromones, one for the cost and another one for the time. It could be concluded that the number of solutions do not depend on if the pheromone is split or is a function of the two variables because both method explore the same solution space. Although both methods explore the same solution space, the POS generated by every one is different. The POS that is generated when the pheromone matrix is split got solutions with lower time and cost than SMP because in the probabilistic decision rule a value of λ = 0.2 is used. It means that the ants preferred solution with a low cost instead of solutions with low time. The strategy of letting the best-so-far ant deposit pheromone over the PM accelerates the algorithm to get the optimal POS although the number of ants in the colony is small. An experimental example is used to test the algorithm and show the benefits of utilising two pheromone matrices and multiple ant colonies in SC optimisation problem. © 2012 ACADEMY PUBLISHER.
WOS研究方向Computer Science
语种英语
出版者Academy Publisher
WOS记录号WOS:000218096100021
内容类型期刊论文
源URL[http://ir.lut.edu.cn/handle/2XXMBERH/111496]  
专题国际合作处(港澳台办)
计算机与通信学院
土木工程学院
作者单位1.School of Computer and Communication, Lanzhou University of Technology, Lanzhou, China;
2.Key Laboratory of Gansu Advanced Control for Industrial Process, Lanzhou, China;
3.College of Civil Engineering, LanZhou University of Technology, Lanzhou, China
推荐引用方式
GB/T 7714
Zhao, FuQing,Tang, JianXin,Yang, YaHong. A new approach based on Ant Colony Optimization (ACO) to determine the supply chain (SC) design for a product mix[J]. Journal of Computers,2012,7(3):736-742.
APA Zhao, FuQing,Tang, JianXin,&Yang, YaHong.(2012).A new approach based on Ant Colony Optimization (ACO) to determine the supply chain (SC) design for a product mix.Journal of Computers,7(3),736-742.
MLA Zhao, FuQing,et al."A new approach based on Ant Colony Optimization (ACO) to determine the supply chain (SC) design for a product mix".Journal of Computers 7.3(2012):736-742.
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