Nonlinear system identification using a prefiltering bank with wavelet impulse responses

M. Alexiu, D. Aiordachioaie
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Abstract

This paper proposes a scheme for decreasing the number of parameters identified by adaptive filters (with finite impulse response). The decrease of the computational complexity and the increase of the convergence speed are among the benefits of using the proposed identification scheme. A second order Volterra system is considered as reference system to be identified. A filter bank is used to decompose the (stationary) input signal into several components, which are then cross-multiplied and used as input sequence for an adaptive algorithm. Due to its good convergence properties, RLS is used in this paper as adaptive algorithm; current RLS implementations require a computational complexity that exponentially grows with the number of parameters. One set of functions are used for the impulse responses of the filter bank: reverse biorthogonal spline wavelet functions. The experiments are analyzed from identification accuracy, tracking capability, identified impulse response and obtained quality versus needed computational complexity points of view; RLS convergence data is provided.
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基于小波脉冲响应的预滤波组非线性系统辨识
本文提出了一种减少有限脉冲响应自适应滤波器辨识参数数目的方案。该方法的优点是降低了计算复杂度,提高了收敛速度。将二阶Volterra系统作为待辨识的参考系统。滤波器组用于将(平稳)输入信号分解为几个分量,然后交叉相乘并用作自适应算法的输入序列。由于其良好的收敛性,本文采用RLS作为自适应算法;当前的RLS实现需要的计算复杂度随着参数的数量呈指数增长。一组函数用于滤波器组的脉冲响应:反向双正交样条小波函数。从识别精度、跟踪能力、识别脉冲响应和获得质量与所需的计算复杂度等方面对实验进行了分析;给出了RLS收敛数据。
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