A. Muhammad, N. R. Hasma Abdullah, Mohammed A. H. Ali, I. H. Shanono, R. Samad
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引用次数: 0
摘要
路径规划是自主机器人的基本特性之一。从一个预定义的点到另一个点建立无碰撞路径的能力被称为路径规划。提供了多种方法,所有这些方法都根据搜索模式和映射表示方法而有所不同。本研究对概率路线图(Probabilistic Roadmaps, PRMs)、A-star、快速探索随机树(rapid Exploring Random Trees, RRTs)和广义激光模拟器(Generalized Laser Simulator, GLS)四种鲁棒路径规划算法进行了仿真,并根据覆盖的总路径距离、搜索时间和路径平滑度对其性能进行了测量和比较。结果表明,四种算法均能成功导航并生成可行的二维地图。GLS算法在所有测量参数中表现较好,其次是PRM、RRT,最后是A*算法。
Simulation Performance Comparison of A*, GLS, RRT and PRM Path Planning Algorithms
Path planning is among the essential qualities of an autonomous robot. The ability to build a collision-free pathway from a pre-defined point to another is known as path planning. There are a variety of approaches offered, all of which vary depending on the search pattern and the map representation method. In this study, four robust path planning algorithms, namely: Probabilistic Roadmaps (PRMs), A-star, the Rapidly Exploring Random Trees (RRTs), and Generalized Laser Simulator (GLS), were simulated and their performance was measured and compared according to the total path distance covered, search time and path smoothness. The result obtained reveals that all the four algorithms could navigate and generate a feasible through the 2D map successfully. The GLS algorithm performs better in all the measured parameters followed by the PRM, RRT, and then the A* algorithm.