Modelling, Identification and Stable Adaptive Control of Continuous-Time Nonlinear Dynamical Systems Using Neural Networks

M. Polycarpou, Petros A. Ioannou
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引用次数: 141

Abstract

Several empirical studies have demonstrated the feasibility of employing neural networks as models of nonlinear dynamical systems. This paper develops the appropriate mathematical tools for synthesizing and analyzing stable neural network based identification and control schemes. Feedforward network architectures are combined with dynamical elements, in the form of stable filters, to construct a general recurrent network configuration which is shown to be capable of approximating a large class of dynamical systems. Adaptive identification and control schemes, based on neural network models, are developed using the Lyapunov synthesis approach with the projection modification method. These schemes are shown to guarantee stability of the overall system, even in the presence of modelling errors. A crucial characteristic of the methods and formulations developed in this paper is the generality of the results which allows their application to various neural network models as well as other approximators.
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连续时间非线性动力系统的神经网络建模、辨识与稳定自适应控制
一些实证研究已经证明了将神经网络作为非线性动力系统模型的可行性。本文开发了合适的数学工具来综合和分析基于稳定神经网络的辨识和控制方案。前馈网络结构以稳定滤波器的形式与动态元素相结合,构建了一个通用的循环网络结构,该网络结构被证明能够近似一类大的动态系统。利用Lyapunov综合方法和投影修正法,提出了基于神经网络模型的自适应辨识和控制方案。这些方案被证明可以保证整个系统的稳定性,即使在存在建模误差的情况下。本文开发的方法和公式的一个关键特征是结果的通用性,这使得它们可以应用于各种神经网络模型以及其他近似器。
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