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Controller design for quadrotor UAVs using reinforcement learning

机译:使用强化学习的四旋翼无人机控制器设计

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Quadrotor UAVs are one of the most preferred type of small unmanned aerial vehicles because of the very simple mechanical construction and propulsion principle. However, the nonlinear dynamic behavior requires a rather advanced stabilizing control of these vehicles. One possible approach that relaxes the difficult task of nonlinear control design is the application of a learning algorithm that allows the training of suitable control actions. Here we apply reinforcement learning as one form of unsupervised learning. In this paper, we first propose a nonlinear autopilot for quadrotor UAVs based on feedback linearization. This controller is then compared to an autopilot which has been learned by reinforcement learning using fitted value iteration with regard to design effort and performance. First simulation and experimental results underline the outcome of this comparison.
机译:Quadrotor无人机是最优选的小型空中飞行器之一,因为机械结构非常简单,推进原理。然而,非线性动态行为需要对这些车辆的相当高级的稳定控制。一种可以放松非线性控制设计困难任务的一种可能方法是应用允许培训合适的控制动作的学习算法。在这里,我们将加强学习作为一种形式的无人监督学习。在本文中,我们首先为基于反馈线性化提出了用于四轮压积无人机的非线性自动驾驶仪。然后将该控制器与自动驾驶仪进行比较,该自动驾驶仪通过加固学习使用拟合的价值迭代来了解设计努力和性能。第一次仿真和实验结果强调了这种比较的结果。

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