自适应高斯参数粒子群算法及其在移动机器人路径规划中的实现

N. Setyawan, R. E. A. Kadir, A. Jazidie
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引用次数: 11

摘要

提出了基于启发式优化的路径规划方法,将路径规划问题简化为优化问题。粒子群优化算法(PSO)是一种常用的启发式优化方法,具有简单、易于实现、参数设置少等优点。然而,基本粒子群算法难以平衡探索和开发,且存在过早收敛的问题,可能会限制其解决路径规划问题的效率。为了克服这些缺点,有效地解决路径规划问题,本文提出了高斯参数更新规则,通过保持对粒子的探索和利用来加快收敛速度。然后,在分析粒子群算法行为的基础上,提出粒子重新初始化,防止粒子群算法过早收敛。在AIW自适应惯性粒子群算法和标准粒子群算法的基准测试中,仿真结果表明,所提出的粒子群算法比其他算法更快地找到最优解,在150次迭代内收敛。此外,粒子重新初始化可以有效地找到最优解,使最短路径增加3%,光滑路径增加10%,保证无碰撞路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Gaussian parameter particle swarm optimization and its implementation in mobile robot path planning
Path planning based on heuristic optimization method is developed to simplify the path planning issues into optimization problems. Particle Swarm Optimization (PSO) is one of the heuristic optimization methods often used because of its simplicity, easy to implement and has few parameters to set. However, the basic PSO algorithm has difficulties balancing exploration and exploitation, and suffer from premature convergence, it efficiency to solve path planning problem may be restricted. Aiming to overcome these drawbacks and solving the path planning problem efficiently, this paper proposed the Gaussian parameter updating rule use to speed up the convergence by maintaining exploration and exploitation of the particle. Then, particle re-initialization is proposed after analyzing the behavior of PSO algorithm to prevent premature convergence. Simulation result shows in benchmark test with Adaptive Inertia (AIW) PSO and standard PSO that the proposed PSO algorithm can find optimal solution /aster than the other algorithm which can convergence in less than 150 iterations. Furthermore, particle re-initialization can find optimal solution efficiently which result in 3% more shortest, 10% more smooth and guaranteed to collision free path.
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