Shi Xiaocheng, Lim Cheng-Chew, Shi Peng, Xu Shengyuan
IEEE Trans Neural Netw Learn Syst. 2018 Nov;29(11):5200-5213. doi: 10.1109/TNNLS.2018.2793968. Epub 2018 Feb 6.
This paper focuses on the problem of adaptive output-constrained neural tracking control for uncertain nonstrict-feedback systems in the presence of unknown symmetric output dead zone and input saturation. A Nussbaum-type function-based dead-zone model is introduced such that the dynamic surface control approach can be used for controller design. The variable separation technique is employed to decompose the unknown function of entire states in each subsystem into a series of smooth functions. Radial basis function neural networks are utilized to approximate the unknown black-box functions derived from Young's inequality. With the help of auxiliary first-order filters, the dimensions of neural network input are reduced in each recursive design. A main advantage of the proposed method is that for an -order nonlinear system, only one adaptation parameter needs to be tuned online. It is rigorously shown that the proposed output-constrained controller guarantees that all the closed-loop signals are semiglobal uniformly ultimately bounded and the tracking error never violates the output constraint.
本文聚焦于存在未知对称输出死区和输入饱和情况下,不确定非严格反馈系统的自适应输出约束神经跟踪控制问题。引入了基于努斯鲍姆型函数的死区模型,以便将动态表面控制方法用于控制器设计。采用变量分离技术将每个子系统中整个状态的未知函数分解为一系列光滑函数。利用径向基函数神经网络逼近由杨氏不等式导出的未知黑箱函数。借助辅助一阶滤波器,在每次递归设计中降低神经网络输入的维数。所提方法的一个主要优点是,对于一个(n)阶非线性系统,只需在线调整一个自适应参数。严格证明了所提输出约束控制器保证所有闭环信号半全局一致最终有界,且跟踪误差从不违反输出约束。