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Neuro-fuzzy system based identification method for Hammerstein processes

机译:基于神经模糊系统的Hammersein工艺识别方法

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Hammerstein model, which consists of the cascade structure of a static nonlinearity followed by a linear dynamic part, can effectively describe the nonlinear dynamics of many industrial processes. To circumvent the open problems in existing identification methods of Hammerstein processes, Sung developed a new system identification method, which completely separates the identification problem of the linear dynamic part from that of nonlinear static part using a special test signal. However, the polynomials are employed to approximate the nonlinear static function with some conditions that may limit its practical applications. To alleviate this problem, neuro-fuzzy system is employed in this paper to describe the nonlinear static function of the Hammerstein model without any prior knowledge and restriction on static nonlinear function. Furthermore, a non-iterative algorithm is proposed to obtain the neuro-fuzzy system based nonlinear static model. Literature examples are used to illustrate the performance and applicability of the proposed Hammerstein model.
机译:Hammerstein模型由静态非线性的级联结构组成,然后是线性动态部分,可以有效地描述许多工业过程的非线性动态。为了规避现有的HammerseIn工艺识别方法中的开放问题,SunG开发了一种新的系统识别方法,它使用特殊测试信号完全将线性动态部分的识别问题与非线性静态部分的识别问题分开。然而,使用多项式来近似非线性静态功能,其一些可能限制其实际应用的条件。为了缓解这一问题,本文采用了神经模糊系统,以描述HammerseIn模型的非线性静态功能,而无需对静态非线性函数的任何先验知识和限制。此外,提出了一种非迭代算法来获得基于神经模糊系统的非线性静态模型。文献示例用于说明所提出的Hammerstein模型的性能和适用性。

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