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首页> 外文期刊>International journal of aerospace engineering >Self-Navigating UAVs for Supervising Moving Objects over Large-Scale Wireless Sensor Networks
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Self-Navigating UAVs for Supervising Moving Objects over Large-Scale Wireless Sensor Networks

机译:用于在大型无线传感器网络上监督移动物体的自行网络

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摘要

Increasingly inexpensive unmanned aerial vehicles (UAVs) are helpful for searching and tracking moving objects in ground events. Previous works either have assumed that data about the targets are sufficiently available, or they solely rely on on-board electronics (e.g., camera and radar) to chase them. In a searching mission, path planning is essentially preprogrammed before taking off. Meanwhile, a large-scale wireless sensor network (WSN) is a promising means for monitoring events continuously over immense areas. Due to disadvantageous networking conditions, it is nevertheless hard to maintain a centralized database with sufficient data to instantly estimate target positions. In this paper, we therefore propose an online self-navigation strategy for a UAV-WSN integrated system to supervise moving objects. A UAV on duty exploits data collected on the move from ground sensors together with its own sensing information. The UAV autonomously executes edge processing on the available data to find the best direction toward a target. The designed system eliminates the need of any centralized database (fed continuously by ground sensors) in making navigation decisions. We employ a local bivariate regression to formulate acquired sensor data, which lets the UAV optimally adjust its flying direction, synchronously to reported data and object motion. In addition, we also construct a comprehensive searching and tracking framework in which the UAV flexibly sets its operation mode. As a result, least communication and computation overhead is actually induced. Numerical results obtained from NS-3 and Matlab cosimulations have shown that the designed framework is clearly promising in terms of accuracy and overhead costs.
机译:越来越低廉的无人驾驶飞行器(无人机)有助于在地面事件中搜索和跟踪移动物体。以前的作用要么假定有关目标的数据是充分的可用,或者他们完全依赖于板上电子设备(例如,相机和雷达)来追逐它们。在搜索任务中,路径规划基本上在起飞之前预编程。同时,大规模的无线传感器网络(WSN)是一种承诺的手段,用于在巨大区域中连续监测事件。由于不利的网络条件,难以维持具有足够数据以立即估计目标位置的集中式数据库。因此,我们为UAV-WSN集成系统提出了一个在线自我导航策略,以监督移动对象。无人机职责利用与地面传感器的移动上收集的数据以及自己的传感信息。 UAV自动对可用数据执行边缘处理,以找到朝向目标的最佳方向。设计的系统在制作导航决策时消除了任何集中数据库(通过地面传感器连续馈送)。我们采用了本地的双重成型回归来制定获得的传感器数据,使UAV能够同步地调整其飞行方向,同时地报告的数据和对象运动。此外,我们还构建了一个全面的搜索和跟踪框架,其中UAV灵活地设置了其操作模式。结果,实际地引起了最少的通信和计算开销。从NS-3和MATLAB辅测获得的数值结果表明,设计的框架在准确性和高度成本方面显然很有前途。

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