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Sos-based Blind Identification Of Nonlinear Volterra Systems

机译:基于Sos的非线性Volterra系统的盲辨识

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摘要

Discrete Volterra models appear widely in various fields of signal processing, control and communication. In this paper, blind identification of a single-input single-output (SISO) Volterra system with finite order and memory is discussed in the second-order Statistical sense. The assumption of inaccessible i.i.d. stationary input signals requires that the kernel estimation is achieved based only on the output observations and the statistical properties of the input signals. The systems are composed of linear moving average (MA) models, nonlinear quadratic, cubic models as well as higher-order nonlinear models. Volterra kernels of arbitrary order are derived as functions of system output observations and are expressed in a general matrix form. Based on this formulation, it is shown that while blind identification is not possible for full-sized Volterra systems, nontrivial kernel estimates can be obtained if the system is approximated by a sparse Volterra model. Results based on simulated and experimental data are provided to confirm results.
机译:离散的Volterra模型广泛出现在信号处理,控制和通信的各个领域。本文在二阶统计意义上讨论了具有有限阶和记忆的单输入单输出(SISO)Volterra系统的盲识别。 i.i.d无法访问的假设固定输入信号要求仅基于输出观测值和输入信号的统计特性来实现核估计。该系统由线性移动平均值(MA)模型,非线性二次模型,三次模型以及高阶非线性模型组成。任意阶数的Volterra内核是作为系统输出观测值的函数导出的,并以通用矩阵形式表示。基于此公式,表明尽管对于完整的Volterra系统不可能进行盲识别,但是如果通过稀疏的Volterra模型来近似该系统,则可以得到非平凡的内核估计。提供基于模拟和实验数据的结果以确认结果。

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