An Improved Ant Colony Optimization Algorithm for Multi-Agent Path Planning

Shuai Huang, Dingkang Yang, Chuyi Zhong, Shi Yan, Lihua Zhang
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引用次数: 1

Abstract

In recent years, Ant Colony Optimization algorithm has become one of the most widely used heuristic algorithms and has been apply to solve different types of path planning problems. However, there still are some problems in Multi-Agent Path Finding, such as low convergence efficiency, easy to fall into local optimum and vertex conflict. In this paper, we proposed an Improved Ant Colony Optimization algorithm based on parameter optimization and vertex conflict resolution. First of all, we initialize the distribution of pheromones to reduce the blindness of the algorithm in the early stage. Secondly, we introduce an adaptive pheromone intensity and pheromone reduction factor to avoid the algorithm falling into local optimum. On this basis, the algorithmÿs global search ability and convergence speed are improved by dynamic modification of the evaporation factor and heuristic function. In addition, the strategy of dynamically modifying the influence factor and heuristic function improves the global search ability and convergence speed of the algorithm. To solve vertex conflict in MAPF, we use the design conflict prediction and resolution strategy to effectively avoid vertex conflict and improve the reliability of the multi-agent system. Simulation experiments verify the effectiveness and adaptability of IACO under different complexity environments, and prove that IACO has good convergence speed and path global optimization ability.
一种改进的蚁群算法用于多智能体路径规划
近年来,蚁群优化算法已成为应用最广泛的启发式算法之一,并已被应用于解决不同类型的路径规划问题。然而,多智能体寻径算法仍然存在收敛效率低、容易陷入局部最优和顶点冲突等问题。本文提出了一种基于参数优化和顶点冲突解决的改进蚁群算法。首先,我们对信息素的分布进行初始化,以减少算法早期的盲目性。其次,引入自适应信息素强度和信息素缩减因子,避免算法陷入局部最优;在此基础上,通过动态修改蒸发因子和启发式函数,提高了algorithmÿs全局搜索能力和收敛速度。此外,动态修改影响因子和启发式函数的策略提高了算法的全局搜索能力和收敛速度。针对MAPF中的顶点冲突问题,采用设计冲突预测与解决策略,有效地避免了顶点冲突,提高了多智能体系统的可靠性。仿真实验验证了该算法在不同复杂度环境下的有效性和适应性,证明了该算法具有良好的收敛速度和路径全局寻优能力。
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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