IEEE Trans Neural Netw Learn Syst. 2013 Sep;24(9):1400-13. doi: 10.1109/TNNLS.2013.2258681.
In this paper, adaptive neural network control is investigated for single-master-multiple-slaves teleoperation in consideration of time delays and input dead-zone uncertainties for multiple mobile manipulators carrying a common object in a cooperative manner. Firstly, concise dynamics of teleoperation systems consisting of a single master robot, multiple coordinated slave robots, and the object are developed in the task space. To handle asymmetric time-varying delays in communication channels and unknown asymmetric input dead zones, the nonlinear dynamics of the teleoperation system are transformed into two subsystems through feedback linearization: local master or slave dynamics including the unknown input dead zones and delayed dynamics for the purpose of synchronization. Then, a model reference neural network control strategy based on linear matrix inequalities (LMI) and adaptive techniques is proposed. The developed control approach ensures that the defined tracking errors converge to zero whereas the coordination internal force errors remain bounded and can be made arbitrarily small. Throughout this paper, stability analysis is performed via explicit Lyapunov techniques under specific LMI conditions. The proposed adaptive neural network control scheme is robust against motion disturbances, parametric uncertainties, time-varying delays, and input dead zones, which is validated by simulation studies.
本文针对多移动机械臂协同搬运共同目标的主从式遥操作,考虑时滞和输入死区不确定性,研究了自适应神经网络控制。首先,在任务空间中建立了由单个主机器人、多个协调的从机器人和目标组成的遥操作系统的简明动力学模型。为了处理通信通道中不对称时变延迟和未知不对称输入死区,通过反馈线性化将遥操作系统的非线性动力学转换为两个子系统:包括未知输入死区和用于同步的延迟动力学的局部主或从动力学。然后,提出了一种基于线性矩阵不等式(LMI)和自适应技术的模型参考神经网络控制策略。所开发的控制方法确保定义的跟踪误差收敛到零,而协调内力误差保持有界且可任意小。在本文中,通过特定的 LMI 条件下的显式 Lyapunov 技术进行稳定性分析。所提出的自适应神经网络控制方案对运动干扰、参数不确定性、时变延迟和输入死区具有鲁棒性,通过仿真研究得到了验证。