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Path planning of mobile Robot based on improved ant colony algorithm based on Honeycomb grid

机译:基于蜂窝网格的改进蚁群算法的移动机器人路径规划

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Based on the problems of traditional ant colony algorithm in complex environment such as slow convergence speed and easily falling into local optimal value, this paper proposes an improved ant colony algorithm based on honeycomb grid. Firstly, a grid map based on honeycomb grid was established to solve the problem of non-uniformity of traditional grid step size. Secondly, according to the traditional ant colony algorithm blindly search for the path in the early stage, centering on the straight line from the starting point to the end point, the design of uneven distribution of initial pheromone concentration was carried out by integrating three factors, namely the length from the ideal line, the number of obstacle grids and the target deviation Angle, to avoid the blind search in the early planning, improve the search efficiency in the early stage, and alleviate the problem of ant death. Thirdly, an adaptive attenuation coefficient is introduced to improve the heuristic function to strengthen the guiding role of pheromones in the later period and accelerate the convergence speed. The safety factor is introduced into the transfer probability to reduce the ant "deadlock" problem. Then, the updating rules of pheromones are improved by combining ant colony sequencing model, and the critical range of pheromones is set to improve the global optimization ability. The simulation results show that the proposed algorithm can improve the global search capability, and the path length and turning point can be reduced by 17.12% and 55.56% respectively compared with the traditional algorithm. The effectiveness of the proposed algorithm is verified.
机译:基于复杂环境中传统蚁群算法的问题,如缓慢收敛速度,易于落入局部最优值,提出了一种基于蜂窝电网的改进的蚁群算法。首先,建立基于蜂窝电网的网格图来解决传统网格步长的不均匀性问题。其次,根据传统的蚁群算法盲目地搜索早期阶段的路径,从起点到终点以直线为中心,通过整合三个因素来进行初始信息素浓度不均匀分布的设计,即从理想线路的长度,障碍物网格的数量和目标偏差角,以避免在早期规划中盲目搜索,提高早期搜索效率,并减轻蚂蚁死亡问题。第三,引入了自适应衰减系数以改善启发式功能以增强信息素在后期的引导作用,并加速收敛速度。将安全因子引入转移概率以减少蚂蚁“死锁”问题。然后,通过组合蚁群测序模型来改善信息素的更新规则,并且设定了信息素的临界范围以提高全局优化能力。仿真结果表明,与传统算法相比,该算法可以提高全球搜索能力,路径长度和转弯点分别可以减少17.12%和55.56%。验证了所提出的算法的有效性。

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