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Adaptive nonlinear filters for narrow-band interference suppression in spread-spectrum CDMA systems

机译:自适应非线性滤波器,用于扩频CDMA系统中的窄带干扰抑制

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This paper presents a novel nonlinear filter and parameter estimator for narrow band interference suppression in code division multiple access spread-spectrum systems. As in the article by Rusch and Poor (1994), the received sampled signal is modeled as the sum of the spread-spectrum signal (modeled as a finite state independently identically distributed (i.i.d.) process-here we generalize to a finite state Markov chain), narrow-band interference (modeled as a Gaussian autoregressive process), and observation noise (modeled as a zero-mean white Gaussian process). The proposed algorithm combines a recursive hidden Markov model (HMM) estimator, Kalman filter (KF), and the recursive expectation maximization algorithm. The nonlinear filtering techniques for narrow-band interference suppression presented in Rusch and Poor and our proposed HMM-KF algorithm have the same computational cost. Detailed simulation studies show that the HMM-KF algorithm outperforms the filtering techniques in Rusch and Poor. In particular, significant improvements in the bit error rate and signal-to-noise ratio (SNR) enhancement are obtained in low to medium SNR. Furthermore, in simulation studies we investigate the effect on the performance of the HMM-KF and the approximate conditional mean (ACM) filter in the paper by Rusch and Poor, when the observation noise variance is increased. As expected, the performance of the HMM-KF and ACM algorithms worsen with increasing observation noise and number of users. However, HMM-KF significantly outperforms ACM in medium to high observation noise.
机译:本文提出了一种新颖的非线性滤波器和参数估计器,用于码分多址扩频系统中的窄带干扰抑制。正如Rusch和Poor(1994)的文章中所描述的那样,将接收到的采样信号建模为扩频信号的总和(建模为有限状态的独立均匀分布(iid)过程,这里我们将其推广为有限状态的马尔可夫链),窄带干扰(建模为高斯自回归过程)和观察噪声(建模为零均值白高斯过程)。该算法结合了递归隐马尔可夫模型(HMM)估计器,卡尔曼滤波器(KF)和递归期望最大化算法。 Rusch和Poor提出的用于窄带干扰抑制的非线性滤波技术与我们提出的HMM-KF算法具有相同的计算成本。详细的仿真研究表明,在Rusch and Poor中,HMM-KF算法优于过滤技术。尤其是,在低到中等SNR的情况下,可以显着提高误码率和信噪比(SNR)。此外,在仿真研究中,当观察噪声方差增加时,Rusch and Poor研究了本文对HMM-KF和近似条件均值(ACM)滤波器的性能的影响。不出所料,HMM-KF和ACM算法的性能随着观察噪声和用户数量的增加而恶化。但是,HMM-KF在中等到较高的观察噪声中明显优于ACM。

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