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A Pruning Technique for Volterra Models: Exploiting Knowledge About Input Spectrum

机译:Volterra模型的修剪技术:利用输入谱的知识

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Behavioral modeling and identification of nonlinear time invariant systems in the frequency domain represents an extremely interesting and up to date topic in widespread application fields. The frequency-domain Volterra-Wiener (or polynomial) approach is one of the most widely employed, since it can be derived as the straightforward extension of the usual frequency response function to the nonlinear case. Its main drawback is that its complexity rapidly grows with the number of input harmonic components and nonlinearity order. The purpose of this work is presenting a method to reduce the number of coefficients defining the Volterra models by exploiting a priori knowledge about the input signal spectral content. Similarly to the spectral linearization approximation which is commonly used in radiofrequency and microwave applications, input components are classified into "large" and "small" according to their expected amplitudes. The output spectrum is computed by considering all the possible interactions between large components according to the Volterra theory. On the contrary, interactions between small components are neglected. The proposed modeling approach has been tested in numerical simulations on a Hammerstein system; results clearly show the advantages with respect to a conventional polynomial model.
机译:频域中非线性时间不变系统的行为建模与识别表示广泛应用程序字段中的一个极其迷恋和最新的主题。频域Volterra-Wiener(或多项式)方法是最广泛采用的方法之一,因为它可以被推导为通常频率响应函数的直接延伸到非线性情况。其主要缺点是其复杂性随着输入谐波分量和非线性顺序的数量而迅速增长。本作品的目的是通过利用关于输入信号谱内容的先验知识来呈现减少定义Volterra模型的系数数量的方法。类似于常见用于射频和微波应用的光谱线性化近似,根据其预期幅度,输入组件分为“大”和“小”。通过根据Volterra理论考虑大量组件之间的所有可能的相互作用来计算输出频谱。相反,小部件之间的相互作用被忽略了。拟议的建模方法已经在Hammerstein系统的数值模拟中进行了测试;结果清楚地表明了传统多项式模型的优点。

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