Sliding Mode Controller Applied to Autonomous UAV Operation in Marine Small Cargo Transport

Guilherme F. Carvalho;Fabio A. A. Andrade;Gabryel S. Ramos;Alessandro R. L. Zachi;Ana L. F. de Barros;Milena F. Pinto
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Abstract

Unmanned aerial vehicles (UAVs) have been used in different applications due to their flexibility in maneuvering and performing missions. However, they can face external disturbances, such as wind, which can cause physical instability of the platform. Usually, UAVs commonly use a classical PID controller due to their simple structure and less dependence on the model. However, this classical controller requires expertise from the operator to adjust the parameters when dealing with nonlinearities. Therefore, this work proposes the integration of a slide mode control (SMC) controller into a PX4 flight control unit (FCU) and combining it with computer vision techniques and sensor data fusion to enable autonomous UAV offshore cargo tasks for the Oil & Gas sector. The controller was evaluated in a software in the loop (SITL) simulation performed in the robot operating system (ROS), demonstrating its robustness and potential for small marine cargo transportation using UAVs.
滑模控制器在自主无人机海上小货运输中的应用
无人驾驶飞行器(uav)由于其机动和执行任务的灵活性而被用于不同的应用领域。然而,它们可能面临外部干扰,如风,这可能导致平台的物理不稳定。由于传统的PID控制器结构简单,对模型的依赖性较小,因此无人机通常采用经典的PID控制器。然而,这种经典控制器在处理非线性时需要操作员的专业知识来调整参数。因此,这项工作提出将滑模控制(SMC)控制器集成到PX4飞行控制单元(FCU)中,并将其与计算机视觉技术和传感器数据融合相结合,以实现石油和天然气部门的自主无人机海上货物任务。在机器人操作系统(ROS)中进行的软件在环(SITL)仿真中对该控制器进行了评估,证明了其鲁棒性和使用无人机进行小型海上货物运输的潜力。
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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CiteScore
4.40
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