IEEE Trans Neural Netw Learn Syst. 2017 Jun;28(6):1318-1330. doi: 10.1109/TNNLS.2016.2538779. Epub 2016 Mar 17.
An adaptive neural control strategy for multiple input multiple output nonlinear systems with various constraints is presented in this paper. To deal with the nonsymmetric input nonlinearity and the constrained states, the proposed adaptive neural control is combined with the backstepping method, radial basis function neural network, barrier Lyapunov function (BLF), and disturbance observer. By ensuring the boundedness of the BLF of the closed-loop system, it is demonstrated that the output tracking is achieved with all states remaining in the constraint sets and the general assumption on nonsingularity of unknown control coefficient matrices has been eliminated. The constructed adaptive neural control has been rigorously proved that it can guarantee the semiglobally uniformly ultimate boundedness of all signals in the closed-loop system. Finally, the simulation studies on a 2-DOF robotic manipulator system indicate that the designed adaptive control is effective.
本文提出了一种适用于多输入多输出非线性系统的自适应神经控制策略,该系统具有多种约束。为了解决非对称输入非线性和受约束状态的问题,所提出的自适应神经控制与反推法、径向基函数神经网络、障碍李雅普诺夫函数 (BLF) 和干扰观测器相结合。通过确保闭环系统的 BLF 有界,证明了输出跟踪可以实现,并且所有状态都保持在约束集内,并且消除了未知控制系数矩阵非奇异的一般假设。所构造的自适应神经控制已经被严格证明可以保证闭环系统中所有信号的半全局一致有界。最后,通过对二维机器人操纵器系统的仿真研究表明,所设计的自适应控制是有效的。