Improved ant colony algorithm based on artificial gravity field for adaptive dynamic path planning

Shuo Wang, Lutao Yan, Haiyuan Li, Jian Li
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Abstract

In view of the problems such as unclear target direction, low search efficiency, and slow convergence speed of the basic ant colony algorithm in AGV two-dimensional path planning, an improved ant colony algorithm based on artificial gravity field and triangle pruning method is proposed. The algorithm first uses the attractive strength provided by the gravity field to construct heuristic information, enhancing the guidance of the target point on the planning direction and improving the directionality and search efficiency. Then, based on the concentration enhancement mechanism of the elite ant model's pheromone, an adaptive reward update mechanism for increments is proposed to improve the convergence speed. Next, an adaptive adjustment mechanism of the pheromone heuristic factor value correlated with the iteration number is discussed to balance the randomness and search efficiency of the entire planning process. Finally, the triangle pruning method is applied to global path optimization based on global path planning, effectively reducing the number of turning nodes and improving the actual motion efficiency. Comparative experiments on path planning in two-dimensional static maps using matlab validate the effectiveness of the improved algorithm in AGV global dynamic path planning.
基于人工重力场的改进型蚁群算法,用于自适应动态路径规划
针对AGV二维路径规划中基本蚁群算法存在的目标方向不明确、搜索效率低、收敛速度慢等问题,提出了一种基于人工重力场和三角剪枝法的改进蚁群算法。该算法首先利用重力场提供的吸引力构建启发式信息,增强目标点对规划方向的引导,提高方向性和搜索效率。然后,基于精英蚂蚁模型信息素的浓度增强机制,提出增量自适应奖励更新机制,提高收敛速度。接着,讨论了信息素启发式因子值与迭代次数相关的自适应调整机制,以平衡整个规划过程的随机性和搜索效率。最后,在全局路径规划的基础上,将三角形剪枝法应用于全局路径优化,有效减少了转弯节点的数量,提高了实际运动效率。利用 matlab 进行的二维静态地图路径规划对比实验验证了改进算法在 AGV 全局动态路径规划中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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