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Neuro-fuzzy based identification of Hammerstein OEAR systems

机译:基于神经模糊的Hammersein OEAR系统识别

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摘要

This paper considers the parameter identification of neuro-fuzzy based Hammerstein output error auto-regressive (OEAR) systems by combining multiple signal source separation principle and auxiliary model identification idea. The unmeasurable internal variable is replaced by the correlation function of input and output data, then correlation analysis method is adopted to identify the parameters of linear part. In order to solve the parameter identification of the nonlinear part and the noise model, this paper presents a recursive generalized least squares algorithm based on auxiliary model. The convergence analysis in stochastic process theory shows that the parameter estimation error converges to zero under the persistent excitation condition. Examples results indicate that the proposed algorithm has significant advantages of good recognition accuracy to noise disturbance.
机译:本文通过组合多信号源分离原理和辅助模型识别思路来考虑神经模糊基于HAMBerstein输出误差自动回归(OEAR)系统的参数识别。不可衡量的内部变量由输入和输出数据的相关函数替换,然后采用相关分析方法来识别线性部分的参数。为了解决非线性部件和噪声模型的参数识别,本文介绍了基于辅助模型的递归广义最小二乘算法。随机过程理论的收敛分析表明,参数估计误差在持久激励条件下会聚到零。实例结果表明,该算法具有良好的识别准确性与噪声干扰具有显着优势。

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