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Identification of Nonlinear Dynamical System Based on Raised-Cosine Radial Basis Function Neural Networks

机译:基于升高余弦径向基函数神经网络的非线性动力系统识别

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摘要

In this paper, we present and investigate a new type of radial basis function (RBF) neural networks mechanism using raised-cosine (RC) function to identify nonlinear dynamic system. In this design, the RBF neural networks mechanism utilizes RC function to replace Gaussian function, which is called RCRBF. An N-dimensional RC function has the constant interpolation property, which is benefit for the function approximating errors analysis in the neural networks. Based on multivariable RC function approximation theory, we develop how to select the updated parameters and the distance of adjacent nodes in lattice points. Therefore, the proposed networks can uniformly approximate nonlinear dynamical function. As persistency excitation (PE) plays an important part in neural networks learning system, how does PE condition behave in input sequences is formulated by RC function analysis. The weights updating and errors convergence are concluded by Lyapunov function analysis. To illustrate the effectiveness of the proposed RCRBF method, Van Der Pol and Rossler dynamical system are used as test examples, in comparison with GRBF mechanism. The results show that the proposed method has better accurate identification and approximating effect than that of GRBF mechanism.
机译:在本文中,我们展示并研究了使用凸起 - 余弦(RC)功能来识别非线性动态系统的新型径向基函数(RBF)神经网络机制。在这种设计中,RBF神经网络机制利用RC功能来替换称为RCRBF的高斯函数。 n维RC函数具有恒定的插值属性,这对于神经网络中的近似误差分析有益。基于多变量RC函数近似理论,我们开发了如何选择更新的参数和晶格点中相邻节点的距离。因此,所提出的网络可以均匀地近似非线性动力学功能。随着持久激励(PE)在神经网络学习系统中起重要部分,在输入序列中的PE条件是如何通过RC函数分析制定的。 Lyapunov函数分析结束了权重更新和错误收敛。为了说明所提出的RCRBF方法的有效性,与GRBF机制相比,van der POL和Rossler动态系统用作测试示例。结果表明,该方法具有比GRBF机制更精确的识别和近似效果。

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