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一种用于非线性系统建模的双重神经动力学学习方法

A Duplex Neurodynamic Learning Approach to Modeling Nonlinear Systems

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2024
被引 4
ABS 3

中文导读

提出一种双重神经动力学学习方法,利用双时间尺度递归神经网络和截断奇异值分解,在外部干扰和测量噪声下辨识离散时间非线性系统,仿真验证了其有效性。

Abstract

Data-based discovery of the underlying dynamics of nonlinear systems is of great importance to the prediction and control of engineering systems. This article presents a duplex neurodynamic learning (DNL) approach to the identification of discrete-time nonlinear systems subjected to both external disturbances and measurement noise. A neurodynamic learning method is proposed based on two-timescale recurrent neural networks (RNNs) for system identification. Truncated singular value decomposition is adopted to purify the data contaminated by external disturbances and measurement noises. Two RNNs are employed to cooperatively search for a global optimal solution, and the particle swarm optimization rule is used to reinitialize the RNNs upon the local convergence of the RNNs. The effectiveness and superiority of the proposed DNL method are demonstrated via simulations on benchmark chaotic and NARMAX systems.

非线性系统系统辨识神经网络机器学习