Cao Chengyu, Hovakimyan Naira
Aerospace and Ocean Engineering, Virginia Polytechnic Institute and State University, Blacksburg, VA 24061-0203, USA.
IEEE Trans Neural Netw. 2007 Jul;18(4):1160-71. doi: 10.1109/TNN.2007.899197.
In this paper, we present a novel neural network (NN) adaptive control architecture with guaranteed transient performance. With this new architecture, both input and output signals of an uncertain nonlinear system follow a desired linear system during the transient phase, in addition to stable tracking. This new architecture uses a low-pass filter in the feedback loop, which consequently enables to enforce the desired transient performance by increasing the adaptation gain. For the guaranteed transient performance of both input and output signals of the uncertain nonlinear system, the L1 gain of a cascaded system, comprised of the low-pass filter and the closed-loop desired reference model, is required to be less than the inverse of the Lipschitz constant of the unknown nonlinearities in the system. The tools from this paper can be used to develop a theoretically justified verification and validation framework for NN adaptive controllers. Simulation results illustrate the theoretical findings.
在本文中,我们提出了一种具有保证暂态性能的新型神经网络(NN)自适应控制架构。借助这种新架构,不确定非线性系统的输入和输出信号在暂态阶段除了能稳定跟踪外,还会跟随期望的线性系统。这种新架构在反馈回路中使用了低通滤波器,从而能够通过增加自适应增益来强制实现期望的暂态性能。为了保证不确定非线性系统输入和输出信号的暂态性能,由低通滤波器和闭环期望参考模型组成的级联系统的L1增益需要小于系统中未知非线性项的利普希茨常数的倒数。本文的工具可用于为神经网络自适应控制器开发理论上合理的验证和确认框架。仿真结果说明了理论发现。