Li Han-Xiong, Deng Hua
Department of Manufacturing Engineering and Engineering Management, City University of Hong Kong, Kowloon, Hong Kong.
IEEE Trans Neural Netw. 2006 May;17(3):659-70. doi: 10.1109/TNN.2006.873277.
An approximate internal model-based neural control (AIMNC) strategy is proposed for unknown nonaffine nonlinear discrete processes under disturbed environment. The proposed control strategy has some clear advantages in respect to existing neural internal model control methods. It can be used for open-loop unstable nonlinear processes or a class of systems with unstable zero dynamics. Based on a novel input-output approximation, the proposed neural control law can be derived directly and implemented straightforward for an unknown process. Only one neural network needs to be trained and control algorithm can be directly obtained from model identification without further training. The stability and robustness of a closed-loop system can be derived analytically. Extensive simulations demonstrate the superior performance of the proposed AIMNC strategy.
针对受干扰环境下未知的非仿射非线性离散过程,提出了一种基于近似内模的神经控制(AIMNC)策略。相对于现有的神经内模控制方法,所提出的控制策略具有一些明显的优势。它可用于开环不稳定的非线性过程或一类具有不稳定零动态的系统。基于一种新颖的输入输出近似方法,所提出的神经控制律可直接推导得出,并能直接应用于未知过程。只需训练一个神经网络,且控制算法可直接从模型辨识中获得,无需进一步训练。闭环系统的稳定性和鲁棒性可通过解析方法推导得出。大量仿真结果表明了所提出的AIMNC策略具有卓越的性能。