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Path Planning and Obstacle-Avoidance for Soccer Robot Based on Artificial Potential Field and Genetic Algorithm

机译:基于人工势域和遗传算法的足球机器人路径规划与避免

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It is a key problem in the robot soccer game that is the global path planning and obstacle-avoidance of the soccer robots. The path planning is always gotten into the local minimum value solved by the traditional Artificial Potential Field (APF). However, it can be improved by Genetic Algorithm (GA). In this paper, a novel algorithm (APFGA) combining APF with GA is put forward for the path planning and obstacle-avoidance. First, the algorithm confirms the effective area of obstacle-avoidance and the manner of path generation based on APF, and then it adopts the compact fitness function and designs the genetic operators in detail. Furthermore, the author uses the least square method for curve fitting. In the end, the simulation results indicate that the soccer robot can avoid the obstacles and explore the optimal path by the algorithm presented in this paper.
机译:它是机器人足球比赛中的一个关键问题,即全球路径规划和避免足球机器人的障碍。路径规划总是进入传统人工潜在场(APF)解决的局部最小值。然而,可以通过遗传算法(GA)来改善它。在本文中,提出了一种与GA的新颖算法(APFGA)用于路径规划和避免避免。首先,该算法确认基于APF的避免障碍物的有效面积和路径产生的方式,然后采用紧凑的健身功能并详细设计遗传运营商。此外,作者使用最小二乘法用于曲线拟合。最后,模拟结果表明,足球机器人可以避免障碍物,并通过本文呈现的算法探索最佳路径。

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