外文资料翻译--基于LMS算法的自适应组合滤波器
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1、 PDF外文:http:/ Journal of Electronics and Communications, 2003, 57(4): 295-299中文3773字 英文原文 Combined Adaptive Filter with LMS-Based Algorithms Abstract: A combined adaptive lter is proposed. It consists of parallel LMS-based adaptive FIR lters and an algorithm for choosing the better among them.
2、 As a criterion for comparison of the considered algorithms in the proposed lter, we take the ratio between bias and variance of the weighting coefcients. Simulations results conrm the advantages of the proposed adaptive lter. Keywords: Adaptive lter, LMS algorithm, Combined algorithm,Bias and varia
3、nce trade-off 1 Introduction Adaptive lters have been applied in signal processing and control, as well as in many practical problems, 1, 2. Performance of an adaptive lter depends mainly on the algorithm used for updating the lter weighting coefcients. The most commonly used adaptive systems are th
4、ose based on the Least Mean Square (LMS) adaptive algorithm and its modications (LMS-based algorithms). The LMS is simple for implementation and robust in a number of applications 13. However, since it does not always converge in an acceptable manner, there have been many attempts to improve its per
5、formance by the appropriate modications: sign algorithm (SA) 8, geometric mean LMS (GLMS) 5, variable step-size LMS(VS LMS) 6, 7. Each of the LMS-based algorithms has at least one parameter that should be dened prior to the adaptation procedure (step for LMS and SA; step and smoothing coefcients for
6、 GLMS; various parameters affecting the step for VS LMS). These parameters crucially inuence the lter output during two adaptation phases:transient and steady state. Choice of these parameters is mostly based on some kind of trade-off between the quality of algorithm performance in the mentioned ada
7、ptation phases. We propose a possible approach for the LMS-based adaptive lter performance improvement. Namely, we make a combination of several LMS-based FIR lters with different parameters, and provide the criterion for choosing the most suitable algorithm for different adaptation phases. This met
8、hod may be applied to all the LMS-based algorithms, although we here consider only several of them. The paper is organized as follows. An overview of the considered LMS-based algorithms is given in Section 2.Section 3 proposes the criterion for evaluation and combination of adaptive algorithms. Simu
9、lation results are presented in Section 4. 2. LMS based algorithms Let us dene the input signal vector Tk NkxkxkxX )1()1()( and vector of weighting coefcients as TNk kWkWkWW )()()( 110 .The weighting coefcients vector should be calculated according to:  
10、; 21 kkkk XeEWW ( 1) where is the algorithm step, E is the estimate of the expected value and kTkkk XWde is the error at the in-stant k,and dk is a reference signal. Depe
11、nding on the estimation of expected value in (1), one denes various forms of adaptive algorithms: the LMS kkkk XeXeE , the GLMS ki ikikikk aXeaaXeE 0 10,1, and the SA kkkk esig nXXeE ,1,2,5,8 .The VS LMS has the same form as the LMS, but in the adaptation the step (k) is changed 6, 7. The cons
12、idered adaptive ltering problem consists in trying to adjust a set of weighting coefcients so that the system output, kTkk XWy , tracks a reference signal, assumed as kkTkk nXWd * ,where kn is a zero mean Gaussian noise with the variance 2n ,and *kW is the optimal weight vector (Wiener vector). Two
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