广义高斯噪声信道的非线性自适应窄带干扰抑制

D. C. Shin, C. Nikias
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引用次数: 0

摘要

针对目标信号为宽带信号、加性强干扰为窄带信号、信道噪声分布属于广义高斯分布的情况,提出了一种非线性自适应干扰抑制算法。利用泰勒级数展开和广义高斯分布的性质,得到了新AIM算法的非线性函数。通过归一化LMS算法自适应调整滤波器权值。通过MonteCarlo运行,验证了该算法在信道噪声分布为拉普拉斯时的性能,并与已有的线性和非线性AIM算法进行了比较。
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Nonlinear Adaptive Narrowband-Interference Mitigation in Generalized Gaussian Noise Channels
A nonlinear adaptive interference mitigation (AIM) algorithm is introduced when the signal of interest is a broadband signal, the additive strong interference is a narrowband signal, and its channel noise distribution belongs to generalized Gaussian distributions. The nonlinear function for the new AIM algorithm is obtained by using Taylor series ezpansion and properties of the generalized Gaussian distributions. Its filter weights are adoptively adjusted through the normalized LMS algorithm. Through MonteCarlo runs, its performance is demonstrated and compared with that of ezisting linear and nonlinear AIM algorithms, when the channel noise distribution is Laplace.
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