Lee Choon-Young, Lee Ju-Jang
Department of Electrical Engineering and Computer Science, Korea Advanced Institute of Science and Technology, Daejeon, 305-701, Republic of Korea.
IEEE Trans Syst Man Cybern B Cybern. 2004 Feb;34(1):325-33. doi: 10.1109/tsmcb.2003.811520.
A new adaptive multiple neural network controller (AMNNC) with a supervisory controller for a class of uncertain nonlinear dynamic systems was developed in this paper. The AMNNC is a kind of adaptive feedback linearizing controller where nonlinearity terms are approximated with multiple neural networks. The weighted sum of the multiple neural networks was used to approximate system nonlinearity for the given task. Each neural network represents the system dynamics for each task. For a job where some tasks are repeated but information on the load is not defined and unknown or varying, the proposed controller is effective because of its capability to memorize control skill for each task with each neural network. For a new task, most similar existing control skills may be used as a starting point of adaptation. With the help of a supervisory controller, the resulting closed-loop system is globally stable in the sense that all signals involved are uniformly bounded. Simulation results on a cartpole system for the changing mass of the pole were illustrated to show the effectiveness of the proposed control scheme for the comparison with the conventional adaptive neural network controller (ANNC).
本文针对一类不确定非线性动态系统,开发了一种带有监督控制器的新型自适应多重神经网络控制器(AMNNC)。AMNNC是一种自适应反馈线性化控制器,其中非线性项由多重神经网络逼近。多重神经网络的加权和用于逼近给定任务的系统非线性。每个神经网络代表每个任务的系统动态。对于一些任务重复但负载信息未定义、未知或变化的工作,所提出的控制器是有效的,因为它能够通过每个神经网络记忆每个任务的控制技能。对于新任务,大多数相似的现有控制技能可作为适应的起点。在监督控制器的帮助下,所得闭环系统在所有相关信号均一致有界的意义上是全局稳定的。给出了在杆质量变化的小车摆系统上的仿真结果,以表明所提出的控制方案与传统自适应神经网络控制器(ANNC)相比的有效性。