Research on Logistics Distribution Center Location Based on Improved Immune Algorithm

Article Preview

Abstract:

Logistics center is a mordern logistic facility. The distribution center location determines the operational efficiency of logistics system. The optimum location of distribution center is important to transportation. In order to improved the algorithm's efficiency, elite strategy was introduced based on the standard immune algorithm. The improved algorithm avoid trapping into local optimal solution and solving the problem more slowly. The role of the elite strategy is to make the optimal solution attractively in the next cycle. This method sovles problem both quantitatively and qualitatively, which makes final solution better in accordance with practical demands.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 756-759)

Pages:

1366-1370

Citation:

Online since:

September 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] ZHANG Jia-Shan, WANG Zhi-Hong, CHEN Ying-Xian. Improved Ant Colony Algorithm Based on Elitist Strategy and Application[J]. Computer Systems & Applications, vol. 21(2012), pp.105-108.

Google Scholar

[2] HOU Wen-jing, MA Yong-jie, ZHANG Yan, SHI Yu-jun. Improved ant colony algorithm for solving TSP[J]. Application Research of Computers, vol. 27(2010), p.2087-(2089).

Google Scholar

[3] LI Yangbing, XU Kelin, ZHU Wei. Multi-distribution Center Location Problem and Its Resolution[J]. JOURNAL OF TONGJI UNIVERSITY(NATURAL SCIENCE), vol. 40(2012), pp.789-792, 799.

Google Scholar

[4] Gong M G, Du H F, Jiao L C. Optimal approximation of linear systems by artificial immune response[J]. Science in China Series F: Information Sciences, vol. 49(2006), pp.63-79.

DOI: 10.1007/s11432-005-0314-x

Google Scholar

[5] Banerjee, S., Moses, M.: Scale Invariance of Immune System Response Rates and Times: Perspectives on Immune System Architecture and Implications For Artificial Immune System. Swarm Intelligence, vol. 4(2010), pp.301-318.

DOI: 10.1007/s11721-010-0048-2

Google Scholar

[6] Gong M G, Jiao L C, Du H F, Ma W P. A novel evolutionary strategy based on artificial immune response for constrained optimizations[J]. Chinese Journal of Computers, vol. 30(2007), pp.37-47.

Google Scholar

[7] Gong M G, Jiao L C, Liu F, Du H F. The quaternion model of artificial immune response. In: Proceedings of the 4th International Conference on Artificial Immune Systems. Ganff, Alberta, Canada(2005), pp.207-219.

DOI: 10.1007/11536444_16

Google Scholar