A Multi-UAV System for Exploration and Target Finding in Cluttered and GPS-Denied Environments

Xiaolong Zhu, F. Vanegas, Felipe Gonzalez, Conrad Sanderson
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引用次数: 6

Abstract

The use of multi-rotor Unmanned Aerial Vehicles (UAVs) for Search and Rescue (SAR) and Remote Sensing is rapidly increasing. Multi-rotor UAVs, however, have limited endurance. The range of UAV applications can be widened if teams of multiple UAVs are used. We propose a framework for a team of UAVs to cooperatively explore and find a target in complex GPS-denied environments with obstacles. The team of UAVs autonomously navigates, explores, detects, and finds the target in a cluttered environment with a known map. Examples of such environments include indoor scenarios, urban or natural canyons, caves, and tunnels, where the GPS signal is limited or blocked. The framework is based on a probabilistic Decentralised Partially Observable Markov Decision Processes (Dec-POMDP) which accounts for the uncertainties in sensing and the environment. The team can cooperate efficiently, with each UAV sharing only limited processed observations and their locations during the mission. The system is simulated using the Robotic Operating System (ROS) and Gazebo. Performance of the system with an increasing number of UAVs in several indoor scenarios with obstacles is tested. Results indicate that the proposed multi-UAV system has improvements in terms of time-cost, the proportion of search area surveyed, and successful rates for search and rescue missions.
一种用于混乱和gps拒绝环境下的多无人机探测与目标发现系统
多旋翼无人机在搜救和遥感领域的应用正在迅速增加。然而,多旋翼无人机的续航能力有限。如果使用多架无人机组成的团队,无人机的应用范围可以扩大。我们提出了一种框架,用于无人机团队在复杂的gps拒绝环境和障碍物中合作探索和寻找目标。无人机团队在已知地图的混乱环境中自主导航,探索,探测并找到目标。此类环境的示例包括室内场景、城市或自然峡谷、洞穴和隧道,其中GPS信号有限或受阻。该框架基于概率分散部分可观察马尔可夫决策过程(Dec-POMDP),该过程考虑了传感和环境中的不确定性。团队可以有效地合作,每架无人机在任务期间只共享有限的处理过的观测结果和它们的位置。该系统采用机器人操作系统(ROS)和Gazebo进行仿真。在多个室内有障碍物的场景中,测试了该系统在越来越多的无人机情况下的性能。结果表明,所提出的多无人机系统在时间成本、搜索面积比例和搜救任务成功率方面均有改善。
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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