Wang Changhui, Cui Limin, Liang Mei, Li Jialin, Wang Yantao
IEEE Trans Neural Netw Learn Syst. 2022 Nov;33(11):6677-6689. doi: 10.1109/TNNLS.2021.3082984. Epub 2022 Oct 27.
This article addresses an adaptive neural network (NN) constraint control scheme for a class of fractional-order uncertain nonlinear nonstrict-feedback systems with full-state constraints and input saturation. The radial basis function (RBF) NNs are used to deal with the algebraic loop problem from the nonstrict-feedback formation based on the approximation structure. In order to overcome the problem of input saturation nonlinearity, a smooth nonaffine function is applied to approach the saturation function. To arrest the violation of full-state constraints, the barrier Lyapunov function (BLF) is introduced in each step of the backstepping procedure. By using the fractional-order Lyapunov stability theory and the given conditions, it proves that all the states remain in their constraint bounds, the tracking error converges to a bounded compact set containing the origin, and all signals in the closed-loop system are ensured to be bounded. Finally, the effectiveness of the proposed control scheme is verified by two simulation examples.
本文针对一类具有全状态约束和输入饱和的分数阶不确定非线性非严格反馈系统,提出了一种自适应神经网络(NN)约束控制方案。基于逼近结构,采用径向基函数(RBF)神经网络来处理非严格反馈形式中的代数环问题。为克服输入饱和非线性问题,应用一个光滑非仿射函数来逼近饱和函数。为防止违反全状态约束,在反步过程的每一步引入障碍Lyapunov函数(BLF)。利用分数阶Lyapunov稳定性理论和给定条件,证明了所有状态都保持在其约束范围内,跟踪误差收敛到包含原点的有界紧致集,并且确保闭环系统中的所有信号都是有界的。最后,通过两个仿真例子验证了所提控制方案的有效性。