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A Neural Network Based Torque Controller for Collision-free Navigation of Mobile Robots

机译:基于神经网络的移动机器人碰撞导航扭矩控制器

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In this paper, a neural network based torque controller is proposed for real-time collision-free navigation of non-holonomic mobile robots. A torque resulted from the obstacles is incorporated in the control design based on the artificial potential technique, which locally pushes the robot away from the obstacles to avoid collisions. All the needed environment information can be obtained from on-board robot sensors that has limited visibility range only. A torque from a simply single-layer neural network is employed to learn the completely unknown robot dynamics. The system stability is guaranteed by a Lyapunov stability theory. The real-time fine control of mobile robots is achieved through the on-line learning of the neural network. The effectiveness of the proposed controller is demonstrated by simulation studies in both static and dynamic environments.
机译:在本文中,提出了一种基于神经网络的扭矩控制器,用于非正度移动机器人的实时碰撞导航。由障碍物产生的扭矩在基于人工势技术的控制设计中并入,局部推动机器人远离障碍物以避免碰撞。可以从板载机器人传感器获得所有所需的环境信息,其仅具有有限的可视性范围。使用简单的单层神经网络的扭矩来学习完全未知的机器人动态。利用稳定性理论保证了系统稳定性。通过神经网络的在线学习实现了移动机器人的实时精细控制。通过静态和动态环境中的模拟研究证明了所提出的控制器的有效性。

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