Wang Huanqing, Liu Peter Xiaoping, Li Shuai, Wang Ding
IEEE Trans Neural Netw Learn Syst. 2018 Aug;29(8):3658-3668. doi: 10.1109/TNNLS.2017.2716947. Epub 2017 Aug 29.
This paper presents the development of an adaptive neural controller for a class of nonlinear systems with unmodeled dynamics and immeasurable states. An observer is designed to estimate system states. The structure consistency of virtual control signals and the variable partition technique are combined to overcome the difficulties appearing in a nonlower triangular form. An adaptive neural output-feedback controller is developed based on the backstepping technique and the universal approximation property of the radial basis function (RBF) neural networks. By using the Lyapunov stability analysis, the semiglobally and uniformly ultimate boundedness of all signals within the closed-loop system is guaranteed. The simulation results show that the controlled system converges quickly, and all the signals are bounded. This paper is novel at least in the two aspects: 1) an output-feedback control strategy is developed for a class of nonlower triangular nonlinear systems with unmodeled dynamics and 2) the nonlinear disturbances and their bounds are the functions of all states, which is in a more general form than existing results.
本文提出了一种针对一类具有未建模动态和不可测量状态的非线性系统的自适应神经控制器。设计了一个观测器来估计系统状态。将虚拟控制信号的结构一致性和变量划分技术相结合,以克服非下三角形式中出现的困难。基于反步法和径向基函数(RBF)神经网络的通用逼近特性,开发了一种自适应神经输出反馈控制器。通过李亚普诺夫稳定性分析,保证了闭环系统内所有信号的半全局一致最终有界性。仿真结果表明,受控系统收敛迅速,所有信号均有界。本文至少在两个方面具有创新性:1)针对一类具有未建模动态的非下三角非线性系统开发了一种输出反馈控制策略;2)非线性干扰及其界是所有状态的函数,这比现有结果具有更一般的形式。