Robot Space Exploration Using Peano Paths Generated by Self-Organizing Maps

W. K. Lee, Wlodzislaw Duch, G. S. Ng
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引用次数: 2

Abstract

Autonomous exploration by a team of robots has many important applications in rescue operations, clearing of mine fields and other military applications, and even space exploration. With limited range of sensors robots have to divide exploration tasks among themselves working under multiple constraints. An optimal covering of two-dimensional area by robot trajectories requires formation of space-filling Peano curves. This may be achieved using self-organizing feature map (SOFM) algorithm. There are two steps involved in the proposed approach: first optimal trajectories are defined generating Peano curves for space of arbitrary shape using the SOFM algorithm, and second, robots are deployed for exploration based on selection of start/end nodes and radius of robot sensors. The same approach may be used to direct people or teams exploring some area in rescue operations. Tests simulations show that this approach achieves better coverage and faster exploration than competing algorithms
基于自组织地图生成Peano路径的机器人空间探索
机器人团队的自主探索在救援行动、清除雷区和其他军事应用,甚至太空探索中都有许多重要的应用。在传感器范围有限的情况下,机器人必须在多种约束条件下分工探索任务。机器人轨迹对二维区域的最优覆盖需要形成填充空间的皮亚诺曲线。这可以使用自组织特征映射(SOFM)算法来实现。该方法包括两个步骤:首先,使用SOFM算法定义任意形状空间的最优轨迹,生成Peano曲线;其次,基于开始/结束节点和机器人传感器半径的选择部署机器人进行探索。同样的方法也可以用于指导人员或团队在救援行动中探索某些区域。测试仿真表明,该方法比竞争算法具有更好的覆盖范围和更快的搜索速度
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