Neural network output feedback control of robot formations.

Travis Dierks, Sarangapani Jagannathan
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引用次数: 96

Abstract

In this paper, a combined kinematic/torque output feedback control law is developed for leader-follower-based formation control using backstepping to accommodate the dynamics of the robots and the formation in contrast with kinematic-based formation controllers. A neural network (NN) is introduced to approximate the dynamics of the follower and its leader using online weight tuning. Furthermore, a novel NN observer is designed to estimate the linear and angular velocities of both the follower robot and its leader. It is shown, by using the Lyapunov theory, that the errors for the entire formation are uniformly ultimately bounded while relaxing the separation principle. In addition, the stability of the formation in the presence of obstacles, is examined using Lyapunov methods, and by treating other robots in the formation as obstacles, collisions within the formation are prevented. Numerical results are provided to verify the theoretical conjectures.

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机器人编队的神经网络输出反馈控制。
与基于运动学的群体控制器相比,针对基于leader-follower的群体控制,提出了一种运动学/扭矩输出联合反馈控制律,该律采用回溯法来适应机器人和群体的动力学特性。引入一种神经网络(NN),通过在线权值调整来逼近follower和leader的动态。此外,设计了一种新颖的神经网络观测器来估计跟随机器人和其领导机器人的线速度和角速度。利用李雅普诺夫理论表明,当放松分离原则时,整个地层的误差最终是一致有界的。此外,使用李亚普诺夫方法检查了存在障碍物时队形的稳定性,并通过将队形中的其他机器人视为障碍物来防止队形内的碰撞。数值结果验证了理论推测。
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