机器人网络中标量场映射的压缩和协同移动传感

M. Nguyen, Hung M. La, K. Teague
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引用次数: 17

摘要

本文提出了一种基于压缩协同感知的分布式机器人网络标量场图构建算法。利用协同控制律引导机器人在场地上移动,同时避免相互碰撞和与障碍物的碰撞。在每个时刻,机器人在其感知范围内收集、添加测量值,并与相邻机器人交换数据,形成每个机器人的压缩感知(CS)测量值。经过一定时间的移动和采样后,每个机器人可以实现一定数量的CS测量,从而能够从机器人组访问的位置重建所有感官读数,以构建标量地图。我们进一步分析和制定了与机器人数量、传感器通信范围相关的总通信功耗,并提出了进一步节能的建议。
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Compressive and collaborative mobile sensing for scalar field mapping in robotic networks
In this paper, we propose a compressive and collaborative sensing (CCS) algorithm for distributed robotic networks to build scalar field map. A collaborative control law is utilized to steer the robots to move on the field while avoiding collision with each other and with obstacles. At each time instant, the robots collect, add measurements within their sensing range and exchange data with their neighbors to form compressive sensing (CS) measurements at each robot. After a certain times of moving and sampling, each robot can achieve that number of CS measurements to be able to reconstruct all sensory readings from the positions that the group of robots visited to build a scalar map. We further analyze and formulate the total communication power consumption associated with the number of robots, sensor communication range and provide suggestions for more energy saving.
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