首页> 外文会议>Computational Intelligence in Robotics and Automation (CIRA), 2009 >Comparative study of Genetic Algorithm and Ant Colony Optimization algorithm performances for robot path planning in global static environments of different complexities
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Comparative study of Genetic Algorithm and Ant Colony Optimization algorithm performances for robot path planning in global static environments of different complexities

机译:遗传算法和蚁群优化算法在复杂度不同的全局静态环境下机器人路径规划性能的比较研究

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This paper presents the application of genetic algorithm (ga) and ant colony optimization (ACO) algorithm for robot path planning (RPP) in global static environment. Both algorithms were applied within global maps that consist of different number of free space nodes. These nodes generally represent the free space extracted from the robot map. Performances between both algorithms were compared and evaluated in terms of speed and number of iterations that each algorithm takes to find an optimal path within several selected environments. The effectiveness and efficiency of both algorithms were tested using a simulation approach. Comparison of the performances and parameter settings, advantages and limitations of both algorithms presented herewith can be used to further expand the optimization algorithm in RPP research area.
机译:本文介绍了遗传算法(ga)和蚁群优化(ACO)算法在全局静态环境中机器人路径规划(RPP)中的应用。两种算法都应用在由不同数量的自由空间节点组成的全局地图中。这些节点通常代表从机器人地图提取的自由空间。比较了两种算法之间的性能,并根据速度和迭代次数评估了每种算法在几种选定环境中找到最佳路径所需的迭代次数。两种算法的有效性和效率均使用仿真方法进行了测试。本文介绍的两种算法的性能和参数设置,优点和局限性的比较可用于进一步扩展RPP研究领域中的优化算法。

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