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Wavelet transform based adaptive filters: analysis and new results

机译:基于小波变换的自适应滤波器:分析和新结果

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In this paper the wavelet transform is used in an adaptive filtering structure. The coefficients of the adaptive filter are updated by the help of the least mean square (LMS) algorithm. First, the wavelet transform based adaptive filter (WTAF) is described and it is analyzed for its Wiener optimal solution. Then the performance of the WTAF is studied by the help of learning curves for three different convergence factors: (1) constant convergence factor, (2) time-varying convergence factor, and (3) exponentially weighted convergence factor. The exponentially weighted convergence factor is proposed to introduce scale-based variation to the weight update equation. It is shown for two different sets of data that the rate of convergence increases significantly for all three WTAF structures as compared to that of time-domain LMS. The high convergence rates of the WTAF give us reason to expect that it will perform well in tracking rapid changes in a signal.
机译:本文将小波变换用于自适应滤波结构中。自适应滤波器的系数借助最小均方(LMS)算法进行更新。首先,描述了基于小波变换的自适应滤波器(WTAF)并对其维纳最优解进行了分析。然后借助学习曲线针对三种不同的收敛因子研究WTAF的性能:(1)恒定收敛因子,(2)时变收敛因子和(3)指数加权收敛因子。提出了指数加权收敛因子,将基于尺度的变化引入加权更新方程。对于两个不同的数据集,与时域LMS相比,所有三种WTAF结构的收敛速度均显着提高。 WTAF的高收敛速度使我们有理由期望它在跟踪信号的快速变化方面表现良好。

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