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Fuzzy logic-based self-tuning autopilots for trajectory tracking of a low-cost quadcopter: A comparative study

机译:基于模糊逻辑的自整定自动驾驶仪对低成本四轴飞行器的轨迹跟踪:一项比较研究

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In this work, we develop self-tuning PD-fuzzy autopilots for trajectory tracking of a low-cost Parrot AR.Drone2 quadcopter. We first recall the mathematical model of the system in terms of its multi-input, multi-output (MIMO) transfer function model acquired via system identification technique. Accordingly, we design three self-tuning autopilots by means of fuzzy inference systems to control the position of the drone in 3D space. This research serves as a preliminary study in our design process to investigate the feasibility of our fuzzy self-tuning autopilot before we can implement it into practice. We perform a systematic comparative study to highlight the effectiveness of our control algorithm with respect to fixed-gain autopilot as well as fuzzy logic controller.
机译:在这项工作中,我们开发了自校正PD模糊自动驾驶仪,用于低成本Parrot AR.Drone2四轴飞行器的轨迹跟踪。我们首先回顾通过系统识别技术获得的系统的多输入,多输出(MIMO)传递函数模型的数学模型。因此,我们通过模糊推理系统设计了三个自调整自动驾驶仪,以控制无人机在3D空间中的位置。这项研究是我们设计过程中的一项初步研究,目的是在我们将其实现之前,研究我们的模糊自整定自动驾驶仪的可行性。我们进行了系统的比较研究,以突出我们的控制算法在固定增益自动驾驶仪以及模糊逻辑控制器方面的有效性。

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