自适应线增强技术在自适应滤波器中的应用

R. Soumya, N. Naveen, M. Lal
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引用次数: 13

摘要

本文讨论了一种检测低信噪比微弱信号的方法。使用固定滤波器或使用合适的自适应滤波器可以提高信噪比。在实际应用中,信号和噪声的统计特性通常是未知的。固定滤波器的设计是基于对信号和噪声的先验知识。另一方面,自适应滤波器具有自动调整自身参数的能力,其设计不需要先验地了解信号或噪声特性。为了提高检测性能,在FFT分析前应用自适应线增强器。并比较了LMS和RLS算法以及一组块处理算法BLMS、BAP的性能。利用MATLAB对该自适应滤波器进行仿真,结果证明其性能优于传统的数字滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Adaptive Filter Using Adaptive Line Enhancer Techniques
The paper discusses a method for detection of weak signal having low signal to noise ratio (SNR). SNR can be improved using fixed filters or using a suitable adaptive filter. In practical application, the statistical characteristics of signal and noise are usually unknown. The design of fixed filter is based on priori knowledge of both the signal and noise. Adaptive filters, on the other hand, have the ability to adjust their own parameters automatically and their design requires no priori knowledge of signal or noise characteristics. The adaptive line enhancer is applied before the FFT analysis to improve the detection performance. Performance of ALE using LMS and the RLS algorithms and a set of block processing algorithms BLMS, BAP are also compared. We simulated the adaptive filter with MATLAB, and the results prove its performance is better than the use of a conventional digital filter.
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