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动态环境中基于遗传算法的机器人路径规划
引用本文:廖卫强,周宣达.动态环境中基于遗传算法的机器人路径规划[J].厦门水产学院学报,2012(1):60-64.
作者姓名:廖卫强  周宣达
作者单位:集美大学轮机工程学院,福建厦门361021
摘    要:为解决动态环境中足球机器人的路径规划问题,采用栅格法对机器人工作空间进行划分,用序号标识栅格,并以此序号作为机器人路径规划参数编码,建立了以路径最短、避障为优化目标的遗传算法个体评价函数.采用轮盘赌选择、重合点交叉、多种变异结合等方法完成了遗传操作.针对遗传算法易陷入局部最优的不足,在标准遗传算法基础上加入了复原操作和重构操作,使改进后的遗传算法收敛于全局最优.仿真结果表明:该算法能够成功地在动态环境里规划出一条近似最优的路径,算法是有效的.

关 键 词:足球机器人  路径规划  避障  遗传算法

Soccer Robot Path-planning Based on Genetic
Authors:LIAO Wei-qiang  ZHOU Xuan-da
Institution:(Marine Engineering Institute, Jimei University, Xiamen 361021, China)
Abstract:In the dynamic environment, solve. The paper proposed a method of path p move in a two-dimensional workspace soccer robot dynamic path planning is a difficult problem to lanning based on genetic arithmetic. The robot was supposed to with some obstacles in it. The grids were used to discrete the two-di- mensional workspace. Sequence number of the grid was used to code the moving path of the robot. The se- quence number was so defined that one grid corresponded to only one sequence number. This paper presented an adaptive genetic algorithm function, by which the soccer robot could move along the shortest path and avoid obstacles. And by the roulette wheel selection, coincident- point crossover and combined mutation, the ge- netic operation was completed. For the disadvantage of research convergence of the previous genetic algo- rithm, restoration operation and reconstruction operation were added to the standard genetic algorithm to make the algorithm converge to a global optimum. This algorithm was tested in dynamic environments. The simula- tion experiments showed that this algorithm was able to plan a better path rapidly and thus validated the effec- tiveness of the proposed approach.
Keywords:soccer robots  path planning  obstacle-avoidance  genetic algorithms
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