Efficient Path Planning Algorithm for Mobile Robots Performing Floor Cleaning Like Operations

Vishnu G Nair
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Abstract

In this paper, we introduce an efficient path planning algorithm designed for floor cleaning applications, utilizing the concept of Spanning Tree Coverage (STC). We operate under the assumption that the environment, i.e., the floor, is initially unknown to the robot, which also lacks knowledge regarding obstacle positions, except for the workspace boundaries. The robot executes alternating phases of exploration and coverage, leveraging the local map generated during exploration to construct a STC tree, which then guides the subsequent coverage (cleaning) phase. The extent of exploration is determined by the range of the robot's sensors. The path generation algorithms for cleaning fall within the broader category of coverage path planning (CPP) algorithms. A key advantage of this algorithm is that the robot returns to its initial position upon completing the operation, minimizing battery usage since sensors are only active during the exploration phase. We classify the proposed algorithm as an offline-online scheme. To validate the effectiveness and non-repetitive nature of the algorithm, we conducted simulations using VRep/MATLAB environments and implemented real-time experiments using Turtlebot in the ROS-Gazebo environment. The results substantiate the completeness of coverage and underscore the algorithm's significance in applications akin to floor cleaning.
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执行类似地板清洁作业的移动机器人的高效路径规划算法
在本文中,我们利用生成树覆盖(STC)概念,介绍了一种专为地板清洁应用设计的高效路径规划算法。我们的假设是,机器人最初对环境(即地板)是未知的,除了工作区边界外,它也不知道障碍物的位置。机器人交替执行探索和覆盖阶段,利用探索过程中生成的局部地图构建 STC 树,然后指导后续的覆盖(清洁)阶段。探索范围由机器人的传感器范围决定。用于清洁的路径生成算法属于覆盖路径规划(CPP)算法的大类。该算法的一个主要优点是,机器人在完成操作后会返回到初始位置,从而最大限度地减少了电池使用量,因为传感器仅在探索阶段处于活动状态。我们将所提出的算法归类为离线-在线方案。为了验证算法的有效性和非重复性,我们使用 VRep/MATLAB 环境进行了模拟,并在 ROS-Gazebo 环境中使用 Turtlebot 进行了实时实验。实验结果证实了覆盖范围的完整性,并强调了该算法在类似地板清洁应用中的重要性。
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6.30
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