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DCP-SLAM:用于自主机器人高效导航的分布式协作部分群体 SLAM。

DCP-SLAM: Distributed Collaborative Partial Swarm SLAM for Efficient Navigation of Autonomous Robots.

机构信息

Autonomous Systems Laboratory, Department of Future Technologies, University of Turku, Vesilinnantie 5, 20500 Turku, Finland.

ABB Oy, 00380 Helsinki, Finland.

出版信息

Sensors (Basel). 2023 Jan 16;23(2):1025. doi: 10.3390/s23021025.

Abstract

Collaborative robots represent an evolution in the field of swarm robotics that is pervasive in modern industrial undertakings from manufacturing to exploration. Though there has been much work on path planning for autonomous robots employing floor plans, energy-efficient navigation of autonomous robots in unknown environments is gaining traction. This work presents a novel methodology of low-overhead collaborative sensing, run-time mapping and localization, and navigation for robot swarms. The aim is to optimize energy consumption for the swarm as a whole rather than individual robots. An energy- and information-aware management algorithm is proposed to optimize the time and energy required for a swarm of autonomous robots to move from a launch area to the predefined destination. This is achieved by modifying the classical Partial Swarm SLAM technique, whereby sections of objects discovered by different members of the swarm are stitched together and broadcast to members of the swarm. Thus, a follower can find the shortest path to the destination while avoiding even far away obstacles in an efficient manner. The proposed algorithm reduces the energy consumption of the swarm as a whole due to the fact that the leading robots sense and discover respective optimal paths and share their discoveries with the followers. The simulation results show that the robots effectively re-optimized the previous solution while sharing necessary information within the swarm. Furthermore, the efficiency of the proposed scheme is shown via comparative results, i.e., reducing traveling distance by 13% for individual robots and up to 11% for the swarm as a whole in the performed experiments.

摘要

协作机器人代表了群体机器人领域的发展,在从制造到探索的现代工业中无处不在。虽然已经有很多关于使用平面图为自主机器人进行路径规划的工作,但在未知环境中自主机器人的节能导航正受到关注。这项工作提出了一种新的低开销协作感知、运行时映射和定位以及机器人群导航方法。其目的是优化整个群体的能量消耗,而不是单个机器人的能量消耗。提出了一种能量和信息感知的管理算法,以优化自主机器人群从发射区到预定义目的地的移动所需的时间和能量。这是通过修改经典的部分群体 SLAM 技术来实现的,其中不同群体成员发现的物体部分被拼接在一起并广播给群体成员。因此,跟随者可以找到最短路径到达目的地,同时以有效的方式避免远处的障碍物。由于领先的机器人感知并发现各自的最优路径,并与跟随者共享发现结果,因此该算法降低了整个群体的能量消耗。仿真结果表明,机器人在群体内有效地重新优化了之前的解决方案,并共享了必要的信息。此外,通过比较结果还证明了所提出方案的效率,即在执行的实验中,单个机器人的行驶距离减少了 13%,整个群体的行驶距离减少了 11%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15d9/9862707/421a6534522f/sensors-23-01025-g001.jpg

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