IEEE Trans Cybern. 2014 Dec;44(12):2626-34. doi: 10.1109/TCYB.2014.2311824. Epub 2014 Apr 4.
This paper studies the composite adaptive tracking control for a class of uncertain nonlinear systems in strict-feedback form. Dynamic surface control technique is incorporated into radial-basis-function neural networks (NNs)-based control framework to eliminate the problem of explosion of complexity. To avoid the analytic computation, the command filter is employed to produce the command signals and their derivatives. Different from directly toward the asymptotic tracking, the accuracy of the identified neural models is taken into consideration. The prediction error between system state and serial-parallel estimation model is combined with compensated tracking error to construct the composite laws for NN weights updating. The uniformly ultimate boundedness stability is established using Lyapunov method. Simulation results are presented to demonstrate that the proposed method achieves smoother parameter adaption, better accuracy, and improved performance.
本文针对一类严格反馈形式的不确定非线性系统,研究了复合自适应跟踪控制问题。将动态面控制技术引入基于径向基函数神经网络(NN)的控制框架中,以解决复杂性爆炸的问题。为避免解析计算,采用命令滤波器生成命令信号及其导数。与直接针对渐近跟踪不同,该方法考虑了所辨识的神经网络模型的精度。将系统状态与串-并估计模型之间的预测误差与补偿跟踪误差相结合,构造 NN 权值更新的复合律。利用 Lyapunov 方法证明了系统的一致最终有界稳定性。仿真结果表明,所提出的方法能够实现更平滑的参数自适应、更高的精度和更好的性能。