IEEE Trans Cybern. 2014 May;44(5):583-93. doi: 10.1109/TCYB.2013.2262935. Epub 2013 Oct 10.
This paper studies an adaptive tracking control for a class of nonlinear stochastic systems with unknown functions. The considered systems are in the nonaffine pure-feedback form, and it is the first to control this class of systems with stochastic disturbances. The fuzzy-neural networks are used to approximate unknown functions. Based on the backstepping design technique, the controllers and the adaptation laws are obtained. Compared to most of the existing stochastic systems, the proposed control algorithm has fewer adjustable parameters and thus, it can reduce online computation load. By using Lyapunov analysis, it is proven that all the signals of the closed-loop system are semiglobally uniformly ultimately bounded in probability and the system output tracks the reference signal to a bounded compact set. The simulation example is given to illustrate the effectiveness of the proposed control algorithm.
本文研究了一类具有未知函数的非线性随机系统的自适应跟踪控制。所考虑的系统为非仿射纯反馈形式,这是首次对具有随机干扰的此类系统进行控制。模糊神经网络用于逼近未知函数。基于反推设计技术,得到了控制器和自适应律。与大多数现有的随机系统相比,所提出的控制算法具有更少的可调参数,因此可以降低在线计算负载。通过 Lyapunov 分析,证明了闭环系统的所有信号在概率上都是半全局一致有界的,并且系统输出跟踪参考信号到有界紧集。给出了一个仿真示例,以说明所提出的控制算法的有效性。