Application of Ant Colony Algorithm

Article Preview

Abstract:

This paper mainly considers the application of the ant colony in our life. The principle of ant colony optimization, improves the performance of ant colony algorithm, and the global searching ability of the algorithm. We introduce a new adaptive factor in order to avoid falling into local optimal solution. With the increase the number of interations, this factor will benefit the ant search the edge with lower pheromone concentration and avoid the excessive accumulation of pheromone.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1217-1220

Citation:

Online since:

April 2014

Export:

Price:

* - Corresponding Author

[1] M. Heusse,S. Guerin,U. Syners, and P. Kuntz. Adaptive agent-driven routing and load Balancing in communication networks. Technical Report RR-98001-IASC . (1998).

Google Scholar

[2] D. Subramanian,P. Druschel, and J. Chen. Ants and reinforcement learning: A case study in routing in dynamic networks. Proceedings of IJCAI-97International Joint Conference on Artificial Intelligence . (1997).

Google Scholar

[3] R. van der Put. Routing in the faxfactory using mobile agents. Technical Report R&D-SV-98-276 . (1998).

Google Scholar

[4] Lu Guoying, Liu Zemin. QoS Multicast Routing Based on Ant Algorithm in Internet. The Jounai of China Universities of Posts ant Telecommunication . (2000).

DOI: 10.1109/lcn.2000.891069

Google Scholar

[5] W. L. Pharn, W. C. Chiu. Approximate solutions for the Maximum Benefit Chinese Postman Problem[J]. International Journal of Systems Science, (2005).

Google Scholar

[6] ZHANG Meiyu, HUANG Han, HAO Zhifeng, et al. Motion planning of autonomous mobile robot based on ant colony algorithm[J]. Computer Engineering and Applications, (2005).

Google Scholar