Multi-obstacle Path Planning of UAV Based on Improved Ant Colony System Algorithm

Author(s):  
Fuyuan Ling ◽  
Jinchao Chen ◽  
Chenglie Du
2021 ◽  
Vol 18 (3) ◽  
pp. 172988142110192
Author(s):  
Songcan Zhang ◽  
Jiexin Pu ◽  
Yanna Si ◽  
Lifan Sun

Path planning of mobile robots in complex environments is the most challenging research. A hybrid approach combining the enhanced ant colony system with the local optimization algorithm based on path geometric features, called EACSPGO, has been presented in this study for mobile robot path planning. Firstly, the simplified model of pheromone diffusion, the pheromone initialization strategy of unequal allocation, and the adaptive pheromone update mechanism have been simultaneously introduced to enhance the classical ant colony algorithm, thus providing a significant improvement in the computation efficiency and the quality of the solutions. A local optimization method based on path geometric features has been designed to further optimize the initial path and achieve a good convergence rate. Finally, the performance and advantages of the proposed approach have been verified by a series of tests in the mobile robot path planning. The simulation results demonstrate that the presented EACSPGO approach provides better solutions, adaptability, stability, and faster convergence rate compared to the other tested optimization algorithms.


2013 ◽  
Vol 483 ◽  
pp. 611-614
Author(s):  
Wen Bo Wang

The ant colony algorithm to solve the inspection path planning problem well. The algorithm runs in the different requirements of path and the convergence of the step function q0. The concentration of pheromone bounds, prevent the algorithm premature. To improve the convergence of the proposed algorithm are analyzed and tested by means of experiment.


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