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Two variable step-size adaptive algorithms for non-Gaussian interference environment using fractionally lower-order moment minimization

机译:用于非高斯干扰环境的两种可变步长自适应算法,采用分数低阶矩最小化

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摘要

Two variable step-size adaptive algorithms using fractionally lower-order moment minimization are proposed for system identification in non-Gaussian interference environment. The two algorithms automatically adjust their step sizes and adapt the weight vector by minimizing the p-th moment of the a posteriori error, where p is the order with 1≤p≤2, thus they are named as variable step-size normalized least mean p-th norm (VSS-NLMP) algorithms. The proposed adaptive VSS-NLMP algorithms are applied to both real- and complex-valued systems using low-complexity time-averaging estimation of the lower-order moments. Simulation results show that the misalignment of the proposed VSS-NLMP algorithms with a smaller p converges faster and achieves lower steady-state error in impulsive interference and/or colored input environment. The adaptive VSS-NLMP algorithms also perform better than the adaptive fixed step-size (FSS) NLMP in both Gaussian and finite-variance impulsive interference environments. A theoretical model for the steady-state excess mean-square error is also provided for both Gaussian and Bernoulli-Gaussian interference.
机译:提出了两种采用分数阶低阶矩最小化的可变步长自适应算法,用于非高斯干扰环境下的系统识别。两种算法通过最小化后验误差的p阶矩来自动调整步长并调整权重矢量,其中p是1≤p≤2的阶数,因此被称为可变步长归一化最小均值第p个范数(VSS-NLMP)算法。提出的自适应VSS-NLMP算法使用低阶矩的低复杂度时间平均估计,将其应用于实值和复值系统。仿真结果表明,在脉冲干扰和/或有色输入环境下,具有较小p的VS​​S-NLMP算法的失准收敛更快,并且稳态误差更低。在高斯和有限方差脉冲干扰环境中,自适应VSS-NLMP算法的性能也比自适应固定步长(FSS)NLMP好。还为高斯和伯努利-高斯干涉提供了稳态多余均方误差的理论模型。

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