IEEE Trans Neural Netw Learn Syst. 2018 Feb;29(2):286-298. doi: 10.1109/TNNLS.2016.2619914. Epub 2016 Nov 8.
In this paper, a neuroadaptive fault-tolerant tracking control method is proposed for a class of time-delay pure-feedback systems in the presence of external disturbances and actuation faults. The proposed controller can achieve prescribed transient and steady-state performance, despite uncertain time delays and output constraints as well as actuation faults. By combining a tangent barrier Lyapunov-Krasovskii function with the dynamic surface control technique, the neural network unit in the developed control scheme is able to take its action from the very beginning and play its learning/approximating role safely during the entire system operational envelope, leading to enhanced control performance without the danger of violating compact set precondition. Furthermore, prescribed transient performance and output constraints are strictly ensured in the presence of nonaffine uncertainties, external disturbances, and undetectable actuation faults. The control strategy is also validated by numerical simulation.
本文针对存在外部干扰和执行器故障的一类时滞纯反馈系统,提出了一种神经自适应容错跟踪控制方法。所提出的控制器可以实现规定的瞬态和稳态性能,尽管存在不确定的时滞、输出约束和执行器故障。通过将正切障碍李雅普诺夫-克拉索夫斯基函数与动态面控制技术相结合,所开发的控制方案中的神经网络单元能够从一开始就采取行动,并在整个系统运行范围内安全地发挥其学习/逼近作用,从而在不违反紧致集前提条件的情况下提高控制性能。此外,在存在非仿射不确定性、外部干扰和不可检测执行器故障的情况下,严格保证规定的瞬态性能和输出约束。该控制策略还通过数值模拟进行了验证。