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A comparative review on mobile robot path planning: Classical or meta-heuristic methods?

机译:移动机器人路径规划的比较审查:经典或元启发式方法?

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The involvement of Meta-heuristic algorithms in robot motion planning has attracted the attention of researchers in the robotics community due to the simplicity of the approaches and their effectiveness in the coordination of the agents. This study explores the implementation of many meta-heuristic algorithms, e.g. Genetic Algorithm (GA), Differential Evolution (DE), Particle Swarm Optimization (PSO) and Cuckoo Search Algorithm (CSA) in multiple motion planning scenarios. The study provides comparison between multiple meta-heuristic approaches against a set of well-known conventional motion planning and navigation techniques such as Dijkstra's Algorithm (DA), Probabilistic Road Map (PRM), Rapidly Random Tree (RRT) and Potential Field (PF). Two experimental environments with difficult to manipulate layouts are used to examine the feasibility of the methods listed. several performance measures such as total travel time, number of collisions, travel distances, energy consumption and displacement errors are considered for assessing feasibility of the motion planning algorithms considered in the study. The results show the competitiveness of meta-heuristic approaches against conventional methods. Dijkstra 's Algorithm (DA) is considered a benchmark solution and Constricted Particle Swarm Optimization (CPSO) is found performing better than other meta-heuristic approaches in unknown environments.
机译:由于方法的简单性及其在代理商协调中的简单性和效果,所以在机器人运动规划中的参与引起了机器人社区的研究人员的注意。本研究探讨了许多元启发式算法的实现,例如,多种运动规划场景中的遗传算法(GA),差分演进(DE),粒子群优化(PSO)和Cuckoo搜索算法(CSA)。该研究提供了对一组众所周知的传统运动规划和导航技术的多个元启发式方法之间的比较,例如Dijkstra算法(DA),概率路线图(PRM),快速随机树(RRT)和潜在场(PF) 。使用难以操纵布局的两个实验环境用于检查所列方法的可行性。诸如总旅行时间,碰撞次数,行驶距离,能量消耗和位移误差的几种性能措施被认为是评估研究中考虑的运动规划算法的可行性。结果表明,荟萃启发式方法对传统方法的竞争力。 Dijkstra的算法(DA)被认为是基准解决方案和收缩粒子群优化(CPSO),比未知环境中的其他元启发式方法更好地执行。

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