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A ROS Based Automatic Control Implementation for Precision Landing on Slow Moving Platforms Using a Cooperative Fleet of Rotary-Wing UAVs

机译:一种基于ROS的自动控制自动控制实现,用于使用旋翼无人机合作舰队对慢速移动平台的精密着陆

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In this paper we present an industrial implementation of an efficient method to solve the problem of the automatic precision landing for rotary-wing UAVs, ready to be used inside a cooperative fleet of drones. The realized software module and tests are part of a large industrial R&D Vitrociset project called SWARM: an AI-Enabled Command and Control (C&C) system, able to execute and review ISR missions for mini/micro cooperative fleets of heterogeneous UAVs. Preparatory to the presented results, it was the identification of a non-linear mathematical model as well as the realization of a robust PID-based control system capable of controlling a single drone of the fleet. A discrete-time Kalman filter was integrated and tested to estimate the possible displacement of the landing points, in order to improve the control law through predictive connotations in case of slow moving tags. The presented approach is featured by the balance between computational efficiency and versatility, in particular in the discovering stage of multiple and different AprilTag during the landing phase. The still under test software module uses the Open Source Robotic Operating System (ROS) libraries for both the acquisition of the data necessary to the control laws, and for the execution of the computer vision algorithms implemented for the precision landing. After analyses and simulations campaigns in a synthetic environment and multiple hardware in the loop (HIL) stress tests, the final prototype algorithm was deployed on a commercial-off-the-shelf mini-class UAV, demonstrating landing capacity on a fixed target with an error of less than ten centimeters; moreover, with slow-moving tags, appreciable tracking abilities emerged on sufficiently smooth trajectories. A special interface with the HIL flight controller was then integrated, with the capability of using its telemetry data for distributing them to all the members of the cooperative fleet, making it possible to access the real-time estimate of the states of each single drone, and making each one of them aware of the selected landing areas of the others, by navigation sensors data fusion with a five meters GPS precision.
机译:在本文中,我们提出了一种工业上实施的有效方法,以解决自动精密着陆用于旋转翼无人机,准备的问题的无人驾驶飞机的一个合作车队内使用。所实现的软件模块和测试是一个大的工业R&d Vitrociset项目称为群的一部分:一个AI-启用命令和控制(C&C)系统,能够执行和审查异构无人机小型/微型合作船队ISR任务。预备对所呈现的结果,这是一个非线性数学模型的标识以及实现能够控制舰队的单个无人驾驶飞机的稳健基于PID的控制系统。离散时间卡尔曼滤波器进行积分并进行测试,以估计所述着陆点的可能位移,以便提高通过预测内涵控制定律在缓慢移动的标签的情况下。所提出的方法是通过在着陆阶段在多个和不同的AprilTag的发现阶段的计算效率和通用性,特别之间的平衡功能。静止下测试软件模块使用开源机器人操作系统(ROS)两者的获取必要控制律的数据的库和用于为精密着陆实现的计算机视觉算法的执行。后在合成环境和多个硬件在环(HIL)压力测试的分析和模拟运动,最终原型算法被部署在商业断的,现成的微型类UAV,在带有一个固定目标演示着陆容量不到十厘米的错误;此外,与滞销的标签,明显的跟踪能力上出现了足够平滑的轨迹。与HIL飞行控制器一个特殊的接口,然后集成,使用其遥测数据,它们分发给合作车队的所有成员,使其能够访问的每个单无人机的状态的实时估计的能力,和制作,由导航传感器的数据融合知道别人的选择的着陆区的他们每个人有5米GPS精度。

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