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Helicopter velocity tracking control by adaptive actor-critic reinforcement method

机译:自适应actor-critic强化法控制直升机速度

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A robotic helicopter is an aircraft equipped with a sensing, computing, actuation, and communication infrastructure that allows it to execute a variety of tasks with autonomous mode. In this paper, we present an adaptive actor-critic reinforcement method to obtain near optimal controller for small autonomous helicopter. A network based on Q-value performs the critic and is trained by SARSA algorithm. A BP neural network, which is the actor network, generates control signal of helicopter dynamics. First, the proposed actor-critic reinforcement controller is introduced, then the algorithm is applied to an unmanned helicopter known as a highly nonlinear and complex system and the simulation results are presented.
机译:机器人直升机是一种配备有感应,计算,致动和通信基础结构的飞机,可使其以自主模式执行各种任务。在本文中,我们提出了一种自适应的actor-critic强化方法来获得小型自主直升机的接近最优控制器。基于Q值的网络会执行批判,并通过SARSA算法进行训练。 BP神经网络(演员网络)生成直升机动力学的控制信号。首先,介绍了拟议的actor-critic强化控制器,然后将该算法应用于被称为高度非线性和复杂系统的无人直升机,并给出了仿真结果。

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