基于势场概念的改进蚁群优化算法用于最优路径规划

Joon-Woo Lee, Jeong-Jung Kim, Byoung-Suk Choi, Jujang Lee
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引用次数: 22

摘要

本文提出了一种改进的蚁群优化算法来解决路径规划问题。这些问题是在已知障碍物的环境中寻找从起点到目标点的无碰撞最优路径。用于路径规划的蚁群算法有很多。然而,求解过程耗时长,每次都能得到最优路径也不容易。它也很难适用于复杂和大尺寸的地图。因此,我们研究利用势场格式改进的蚁群算法来解决这些问题。我们还提出改变蚁群算法的控制参数,使其在达到一定迭代次数时迅速收敛到最优解。为了提高蚁群算法的性能,我们采用排序选择法对信息素进行更新。在仿真中,我们将提出的蚁群算法应用于一般路径规划问题。最后,与传统蚁群算法进行了性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Ant Colony Optimization algorithm by potential field concept for optimal path planning
In this paper, an improved ant colony optimization (ACO) algorithm is proposed to solve path planning problems. These problems are to find a collision-free and optimal path from a start point to a goal point in environment of known obstacles. There are many ACO algorithm for path planning. However, it take a lot of time to get the solution and it is not to easy to obtain the optimal path every time. It is also difficult to apply to the complex and big size maps. Therefore, we study to solve these problems using the ACO algorithm improved by potential field scheme. We also propose that control parameters of the ACO algorithm are changed to converge into the optimal solution rapidly when a certain number of iterations have been reached. To improve the performance of ACO algorithm, we use a ranking selection method for pheromone update. In the simulation, we apply the proposed ACO algorithm to general path planning problems. At the last, we compare the performance with the conventional ACO algorithm.
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