Global and Local Area Coverage Path Planner for a Reconfigurable Robot

S. Samarakoon, M. Muthugala, M. R. Elara
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Abstract

Area coverage is essential for robots used in cleaning, painting, and exploration applications. Reconfigurable robots have been introduced to solve the area coverage limitation of fixed-shape robots. The existing global coverage algorithms of reconfigurable robots are limited to consideration of a limited set of predefined shapes for the reconfiguration and do not consider the exact geometrical shape of obstacles. Therefore, degraded coverage performance could be observed from the existing methods. On the other hand, the coverage methods that consider reconfiguring beyond a limited set of predefined shapes are limited to local coverage. Furthermore, these methods only consider a single reconfiguration for the coverage. Therefore, this paper proposes a novel coverage method for a reconfigurable robot consisting of both global and local path planners. The global path planner uses boustrophedon motion combined with the A * algorithm. The optimum grid positioning that maximizes the global coverage is determined through a Genetic Algorithm (GA). The local coverage planner performs continuous reconfig-uration of the robot to adequately cover obstacle zones while navigating through narrow spaces without collisions. A GA is used to determine the reconfiguration parameters of the robot at each instance of the local coverage. Simulation results confirm that the proposed method is effective in performing both global and local coverage path planning for improving the area coverage performance.
一种可重构机器人的全局和局部覆盖路径规划
区域覆盖对于用于清洁,油漆和勘探应用的机器人至关重要。可重构机器人的引入解决了固定形状机器人覆盖区域的限制。现有的可重构机器人全局覆盖算法只能考虑有限的预定义形状,不能考虑障碍物的精确几何形状。因此,从现有的方法中可以观察到覆盖性能下降。另一方面,考虑在有限的预定义形状集合之外重新配置的覆盖方法仅限于局部覆盖。此外,这些方法只考虑覆盖的单个重新配置。因此,本文提出了一种由全局路径规划器和局部路径规划器组成的可重构机器人的覆盖方法。全局路径规划器采用单突运动结合A *算法。通过遗传算法(GA)确定最大全球覆盖率的最优网格定位。局部覆盖规划器执行机器人的连续重新配置,以充分覆盖障碍物区域,同时在狭窄的空间中导航而不会发生碰撞。利用遗传算法确定机器人在每个局部覆盖实例下的重构参数。仿真结果表明,该方法可以有效地进行全局和局部覆盖路径规划,提高区域覆盖性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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