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Identification of nonlinear dynamic MISO systems with orthonormal base function models

机译:用正交基函数模型识别非线性动态MISO系统

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This article presents a theoretical framework for the identification of nonlinear dynamic MISO systems with orthonormal base function models on fundamental basics of the Volterra theory. In the past the Volterra theory was used for the identification of nonlinear dynamic SISO systems (e.g. Hammerstein and Wiener models). In principle it is possible to extend these approaches to systems with more than one input (i.e. MISO systems). In former times this failed due to a lack of computational performance. In this paper an approach is presented which allows the identification of arbitrary coupled Hammerstein and Wiener models with multiple inputs. Some fundamental considerations for the identification of MISO systems based on arbitrary coupled Hammerstein models are made and extended to MISO systems based on arbitrary coupled Wiener models. This extended Volterra theory results in equations where the unknown parameters can be separated of the input values in a linear manner. In order to approximate the truncated impulse responses of the linear dynamic systems and to reduce the number of unknown parameters orthonormal base functions (OBFs) are introduced. As an example the proposed identification method is applied to a MISO system based on forward and backward coupled Hammerstein and Wiener models.
机译:本文提供了一个基于Volterra理论基础的正交正态基函数模型识别非线性动态MISO系统的理论框架。过去,Volterra理论用于识别非线性动态SISO系统(例如Hammerstein和Wiener模型)。原则上,可以将这些方法扩展到具有多个输入的系统(即MISO系统)。在过去,由于缺乏计算性能,此操作失败了。本文提出了一种方法,该方法可以识别具有多个输入的任意耦合的Hammerstein和Wiener模型。对基于任意耦合的Hammerstein模型的MISO系统的识别进行了一些基本考虑,并将其扩展到基于任意耦合的Wiener模型的MISO系统。扩展的Volterra理论产生了方程,其中未知参数可以线性方式与输入值分开。为了逼近线性动力系统的截断脉冲响应并减少未知参数的数量,引入了正交基函数(OBF)。例如,将所提出的识别方法应用于基于前向和反向耦合的Hammerstein和Wiener模型的MISO系统。

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