Loading [MathJax]/extensions/MathMenu.js
Research of path planning for mobile robot based on improved ant colony optimization algorithm | IEEE Conference Publication | IEEE Xplore

Research of path planning for mobile robot based on improved ant colony optimization algorithm


Abstract:

The paper proposes an improved ant colony optimization algorithm. This method first designs two fuzzy controllers to optimize three parameters α, β, ρ. Then it establishe...Show More

Abstract:

The paper proposes an improved ant colony optimization algorithm. This method first designs two fuzzy controllers to optimize three parameters α, β, ρ. Then it establishes a dynamic searching window for ants and chaos information are added when near-neighbour city table is constituted in order to increase research speed in initial stages of algorithm. In addition, the concept of active degree of city node is presented as future information to supervise ants to construct solution and update pheromone. Finally a new evaluation criterion is produced to distinguish where paths are excellent or not. So the strategy not only conquers the weakness of easily running into local optimization while making route optimization, but also enhances efficient convergence of ant colony optimization algorithm. Results of large numbers of computer simulations demonstrate that this novel algorithm can plan optimal path rapidly in intricate three dimension (3-D) environment.
Date of Conference: 27-29 March 2010
Date Added to IEEE Xplore: 17 June 2010
ISBN Information:
Conference Location: Shenyang, China
References is not available for this document.

I. Introduction

Path planning problem of mobile robot is an important content for study area of mobile robot[1]. It indicates that mobile robots search an optimal or secondary optimal and collision- free route in terms of some evaluation functions (such as shortest traveling path or best time etc.) in obstacle environment t[2]. Ant colony optimization (ACO) put forward by M Dorigo in 1991 is a new intelligent optimization algorithm; it has advantages of strong robustness, preferable global optimization performance and easy to blend with other algorithms. Its biologic mechanism is that ant colony seeks a shortest and feasible path between formicary and food fountainhead, so it is fitly consistent with that of path planning of mobile robot. Inartificial relations of interior mechanism between them provide powerful gist for research of path planning based on ant colony optimization algorithm.

Select All
1.
Zhang Haidong, Zhen Rui and Cen Yuwan, "Present Situation and Future Development of Mobile Robot Path Planning Technology", Journal of system simulation, vol. 17, pp. 439-443, Feb. 2005.
2.
Qu Daokui, Du Zhenjun, Xu Dianguo and Xu Fang, "Research on Planning for a Mobile Robot", ROBOT, vol. 30, pp. 97-101, Mar. 2008.
3.
Dong Yongfeng and Gu Junhua, "Combination of GA and Ant Colony Algorithm for distribution network planning", Proceedings of the Sixth International Conference on Machine Learning and Cybernetics, pp. 999-1002, 2007.
4.
Wang Jian, Liu Yanheng and Zhu Jianqi, "Ant Colony Algorithm with Global Adaptive Optimization", Journal of Chinese Computer Systems, vol. 29, pp. 1083-1087, 2008.
5.
Xu Jingming, Cao Xianbin and Wang Yifa, "Polymorphic Ant Colony Algorithm", Journal of University of Science and Technology of China, vol. 35, pp. 59-65, Jan. 2005.
6.
Zhanshan Ma and Axel W. Krings, "Is Chaos theory relevant to reliability and survivability", Aerospace conference, pp. 1-10, Sept., 2009.

Contact IEEE to Subscribe

References

References is not available for this document.