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Comput Intell Neurosci


Title:Mobile Robot Path Planning Using Ant Colony Algorithm and Improved Potential Field Method
Author(s):Chen G; Liu J;
Address:"School of Mechanical and Electronic Engineering, Wuhan University of Technology, Wuhan 430070, Hubei, China"
Journal Title:Comput Intell Neurosci
Year:2019
Volume:20190506
Issue:
Page Number:1932812 -
DOI: 10.1155/2019/1932812
ISSN/ISBN:1687-5273 (Electronic) 1687-5265 (Print)
Abstract:"For the problem of mobile robot's path planning under the known environment, a path planning method of mixed artificial potential field (APF) and ant colony optimization (ACO) based on grid map is proposed. First, based on the grid model, APF is improved in three ways: the attraction field, the direction of resultant force, and jumping out the infinite loop. Then, the hybrid strategy combined global updating with local updating is developed to design updating method of the ACO pheromone. The process of optimization of ACO is divided into two phases. In the prophase, the direction of the resultant force obtained by the improved APF is used as the inspired factors, which leads ant colony to move in a directional manner. In the anaphase, the inspired factors are canceled, and ant colony transition is completely based on pheromone updating, which can overcome the inertia of the ant colony and force them to explore a new and better path. Finally, some simulation experiments and mobile robot environment experiments are done. The experiment results verify that the method has stronger stability and environmental adaptability"
Keywords:"Algorithms Animals *Computer Simulation *Computer Systems Models, Biological *Pheromones *Robotics;"
Notes:"MedlineChen, Guoliang Liu, Jie eng 2019/06/15 Comput Intell Neurosci. 2019 May 6; 2019:1932812. doi: 10.1155/2019/1932812. eCollection 2019"

 
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