An optimal adaptive filtering algorithm with a polynomial prediction model

被引:0
作者
JiaJia Tan
JianQiu Zhang
机构
[1] Fudan University,Department of Electronic Engineering
来源
Science China Information Sciences | 2011年 / 54卷
关键词
adaptive filters; polynomial prediction model; impulse response coefficients; process equation; Kalman filter; optimal;
D O I
暂无
中图分类号
学科分类号
摘要
A new approach to the optimal adaptive filtering is proposed in this paper. In this approach, a polynomial prediction model is used to describe the time-variant/invariant impulse response coefficients of an identified system. When the polynomial prediction model is viewed as the state equations of the identified impulse response coefficients and the relationships between the inputs and outputs of the system are regarded as the measurements of the states, our adaptive filtering can be achieved in the framework of the Kalman filter. It is understood that Kalman filter is optimal in the sense of the MAP (maximum a posteriori), ML (most likelihood) and MMSE (minimum mean square error) under the linear and Gaussian white noise conditions. As a result, our algorithm is also optimal in the statistical senses as Kalman filter does, provided that the impulse response coefficients can be modeled by a polynomial. Not only do the analytical results of the algorithm but also the simulation results show that our algorithm outperforms the traditional known algorithms.
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页码:153 / 162
页数:9
相关论文
共 40 条
[1]  
Glentis G. O.(1999)Efficient least squares adaptive algorithms for FIR transversal filtering IEEE Signal Process Mag 16 13-41
[2]  
Berberidis K.(1997)Necessary and suffcient conditions for stability of LMS IEEE Trans Automat Control 42 761-770
[3]  
Theodoridis S.(1996) optimality of the LMS algorithm IEEE Trans Signal Process 44 267-280
[4]  
Guo L.(1993)Analysis and implementation of variable step size adaptive algorithms IEEE Trans Signal Process 41 2517-2535
[5]  
Ljung L.(1997)A robust variable step-size LMS-type algorithm: analysis and simulations IEEE Trans Signal Process 45 631-639
[6]  
Wang G. J.(1999)A novel kurtosis driven variable step-size adaptive algorithm IEEE Trans Signal Process 47 864-872
[7]  
Hassibi B.(2000)Step-size control for acoustic echo cancellation filters-an overview Signal Process 80 1697-1719
[8]  
Sayed A. H.(1996)On a class of computationally efficient, rapidly converging, generalized NLMS algorithm IEEE Signal Process Lett 3 245-247
[9]  
Kailath T.(1998)Set-member-ship filtering and a set-membership normalized LMS algorithm with an adaptive step size IEEE Signal Process Lett 5 111-114
[10]  
Evans J. B.(2004)Variable step-size NLMS and affine projection algorithms IEEE Signal Process Lett 11 132-135