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Robust Multiuser Detection Based on Least p-Norm State Space Filtering Model

机译:基于最小p范态空间过滤模型的鲁棒多用户检测

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摘要

Alpha stable distribution is better for modeling impulsive noises than Gaussian distribution in signal processing. This class of process has no closed form of probability density function and finite second order moments. In general, Wiener filter theory is not meaningful in SαSG environments because the expectations may be unbounded. We proposed a new adaptive recursive least p-norm Kalman filtering algorithm based on least p-norm of innovation process with infinite variances, and a new robust multiuser detection method based on least p-norm Kalman filtering. The simulation experiments show that the proposed new algorithm is more robust than the conventional Kalman filtering multiuser detection algorithm.
机译:在信号处理中,阿尔法稳定分布比高斯分布更适合于建模脉冲噪声。这类过程没有概率密度函数和有限的二阶矩的封闭形式。通常,维纳滤波器理论在SαSG环境中没有意义,因为期望值可能是无限的。提出了一种基于具有无限方差的创新过程的最小p范数的自适应递归最小p范数卡尔曼滤波算法,以及一种基于最小p范数卡尔曼滤波的鲁棒多用户检测方法。仿真实验表明,所提出的新算法比传统的卡尔曼滤波多用户检测算法具有更好的鲁棒性。

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