IEEE Trans Neural Netw Learn Syst. 2020 Jan;31(1):66-75. doi: 10.1109/TNNLS.2019.2899589. Epub 2019 Mar 18.
This paper studies an adaptive neural network (NN) tracking control method for a class of uncertain nonlinear strict-feedback systems with time-varying full-state constraints. As we all know, the states are inevitably constrained in the actual systems because of the safety and performance factors. The main contributions of this paper are that: 1) in order to ensure that the states do not violate the asymmetric time-varying constraint regions, an adaptive NN controller is constructed by introducing the asymmetric time-varying barrier Lyapunov function (TVBLF) and 2) the amount of the learning parameters is reduced by introducing a TVBLF at each step of the backstepping. Based on the Lyapunov stability analysis, it can be proven that all the signals in the closed-loop system are the semiglobal ultimately uniformly bounded and the time-varying full-state constraints are never violated. Finally, a numerical simulation is given, and the effectiveness of this adaptive control method can be verified.
本文研究了一类具有时变满状态约束的不确定非线性严格反馈系统的自适应神经网络(NN)跟踪控制方法。众所周知,由于安全和性能因素,状态在实际系统中不可避免地受到约束。本文的主要贡献有:1)为了确保状态不违反不对称时变约束区域,通过引入不对称时变障碍李雅普诺夫函数(TVBLF)构建自适应 NN 控制器;2)通过在回溯的每一步引入 TVBLF,减少学习参数的数量。基于 Lyapunov 稳定性分析,可以证明闭环系统中的所有信号都是半全局一致有界的,并且时变满状态约束从不违反。最后,给出了一个数值仿真,验证了这种自适应控制方法的有效性。