Optimal Path Planning for Underwater Robots Based on Improved Ant Colony Algorithm

Kai He, Yuhuan Fei, Xiaowen Teng, Xiaoguang Chu, Zhenwei Ma
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Abstract

When applying traditional ant colony algorithm in the path optimization of underwater robots, there are several problems such as slow convergence speed and poor optimization effect. In this paper, an improved ant colony algorithm was proposed. The improved algorithm enhances the pheromone concentration in the core area of the grid map in the first inquiry stage, which can improve the confluence efficiency of the algorithm. In order to reduce the number of turns of the ants and make the path smoother, the corner heuristic function was added to the state transition probability equation. The position of the target point was added to the heuristic function to boost the target point's guiding influence on the ant colony. In the pheromone update part, the allocation strategy of the wolf pack algorithm was introduced to strengthen the pheromone of the optimal path and at the same time limit the pheromone concentration to reduce the generation of local optimal solutions. In the MATLAB simulation verification, the improved ant colony algorithm plans a shorter path length and fewer turns. The algorithm can effectively avoid obstacles, has better global optimization, and avoids the energy loss of underwater robots. This paper verifies the feasibility and superiority of the improved ant colony algorithm in static path planning.
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基于改进蚁群算法的水下机器人最优路径规划
将传统蚁群算法应用于水下机器人路径优化时,存在收敛速度慢、优化效果差等问题。本文提出了一种改进的蚁群算法。改进后的算法在第一查询阶段增强了网格图核心区域的信息素浓度,提高了算法的合流效率。在状态转移概率方程中加入角点启发式函数,以减少蚁群的转弯次数,使路径更加平滑。在启发式函数中加入目标点的位置,增强目标点对蚁群的引导作用。在信息素更新部分,引入狼群算法的分配策略,增强最优路径的信息素,同时限制信息素的浓度,减少局部最优解的产生。在MATLAB仿真验证中,改进的蚁群算法规划了更短的路径长度和更少的转弯。该算法能有效避开障碍物,具有较好的全局寻优性,避免了水下机器人的能量损失。本文验证了改进蚁群算法在静态路径规划中的可行性和优越性。
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