Gu Ren-Jie, Han Tao, Xiao Bo, Zhan Xi-Sheng, Yan Huaicheng
School of Electrical Engineering and Automation, Hubei Normal University, Huangshi 435005, PR China.
School of Information Science and Engineering, East China University of Science and Technology, Shanghai 200237, PR China.
ISA Trans. 2024 Dec;155:184-192. doi: 10.1016/j.isatra.2024.09.017. Epub 2024 Sep 14.
The task-space distributed adaptive neural network (NN) fixed-time tracking problem is studied for networked heterogeneous robotic systems (NHRSs). In order to address this complex problem, we propose a NN-based fixed-time hierarchical control approach that transforms the problem into two sub-problems: a distributed fixed-time estimation problem and a local fixed-time tracking problem, respectively. Specifically, distributed estimators are constructed so that each follower can acquire the dynamic leader's state in a fixed time. Then, the neural networks (NNs) are employed to approximate the compounded uncertainty consisting of the unknown dynamics of robotic systems and the boundary of the compounded disturbance. More importantly, to guarantee that the tracking errors can converge into a small neighborhood of equilibrium in a fixed time independent of the initial state, the adaptive neural fixed-time local tracking controller is proposed. Another merit of the proposed controller is that the approximation errors are addressed in a novel way, eliminating the need for prior precise knowledge of uncertainties and improving the robustness and convergence speed of unknown robotic systems. Finally, the experimental results demonstrate the effectiveness and advantages of the proposed control method.
研究了网络化异构机器人系统(NHRSs)的任务空间分布式自适应神经网络(NN)固定时间跟踪问题。为了解决这个复杂问题,我们提出了一种基于NN的固定时间分层控制方法,将该问题转化为两个子问题:分别是分布式固定时间估计问题和局部固定时间跟踪问题。具体而言,构建分布式估计器,使得每个跟随者能够在固定时间内获取动态领导者的状态。然后,利用神经网络(NNs)逼近由机器人系统未知动力学和复合干扰边界组成的复合不确定性。更重要的是,为了保证跟踪误差能够在与初始状态无关的固定时间内收敛到平衡的小邻域内,提出了自适应神经固定时间局部跟踪控制器。所提出的控制器的另一个优点是,以一种新颖的方式处理逼近误差,无需对不确定性有先验精确知识,提高了未知机器人系统的鲁棒性和收敛速度。最后,实验结果证明了所提出控制方法的有效性和优势。