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AGV optimal path planning based on improved ant colony algorithm

机译:基于改进蚁群算法的AGV最优路径规划

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Using the traditional Ant Colony Algorithm for AGV path planning is easy to fall into the local optimal solution and lacking the capability of obstacle avoidance in the complex storage environment. In this paper, by constructing the MAKLINK undirected network routes and the heuristic function is optimized in the Ant Colony Algorithm, then the AGV path reaches the global optimal path and has the ability to avoid obstacles. According to research, the improved Ant Colony Algorithm proposed in this paper is superior to the traditional Ant Colony Algorithm in terms of convergence speed and the distance of optimal path planning.
机译:传统的蚁群算法用于AGV路径规划容易陷入局部最优解,并且在复杂的存储环境中缺乏避障的能力。本文通过构造MAKLINK无向网络路由,并在蚁群算法中对启发式函数进行优化,使AGV路径达到全局最优路径并具有避障的能力。根据研究,本文提出的改进蚁群算法在收敛速度和最优路径规划距离上均优于传统的蚁群算法。

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