双突触权神经网络在非线性控制中的应用

Wenming Cao, Shoujue Wang
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摘要

本文研究了基于双突触权神经网络(TSWNN)的非线性动态系统的自适应辨识与控制问题。首先,介绍了一种新的训练TWSWNN的方法,该方法采用自适应模糊广义学习向量量化(AFGLVQ)技术和可变遗忘因子递归最小二乘(VRLS)算法。AFGLVQ调整TSWNN的核,VRLS更新网络的连接权值。该辨识算法具有快速收敛和持续自适应的特点,适合于实时控制。其次,在提前一步的TSWNN预测器的基础上,通过基于数值稳定的Davidon最小二乘(SDLS)最小化方法对控制律进行迭代优化。通过一个非线性算例的仿真,验证了识别和控制算法的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Two Synaptic Weight Neural Networks for Nonlinear Control
In this paper, adaptive identification and control of nonlinear dynamical systems are investigated using two synaptic weight neural networks (TSWNN). Firstly, a novel approach to train the TWSWNN is introduced, which employs an adaptive fuzzy generalized learning vector quantization (AFGLVQ) technique and recursive least squares algorithm with variable forgetting factor (VRLS). The AFGLVQ adjusts the kernels of the TSWNN while the VRLS updates the connection weights of the network. The identification algorithm has the properties of rapid convergence and persistent adaptability that make it suitable for real-time control. Secondly, on the basis of the one-step ahead TSWNN predictor, the control law is optimized iteratively through a numerical stable Davidon's least squares-based (SDLS) minimization approach. A nonlinear example is simulated to demonstrate the effectiveness of the identification and control algorithms
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