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Data-Aided and Blind Stochastic Gradient Algorithms for Widely Linear MMSE MAI Suppression for DS-CDMA

机译:用于DS-CDMA的宽线性MMSE MAI抑制的数据辅助和盲随机梯度算法

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In this paper, three novel stochastic gradient algorithms for adjustment of the widely linear (WL) minimum mean-squared error (MMSE) filter for multiple access interference (MAI) suppression for direct-sequence code-division multiple access (DS-CDMA) are introduced and analyzed. In particular, we derive a data-aided WL least-mean-square (LMS) algorithm, a blind WL minimum-output-energy (MOE) algorithm, and a WL blind LMS (BLMS) algorithm. We give analytical expressions for the steady-state signal-to-interference-plus-noise ratios (SINRs) of the proposed WL algorithms, and we also investigate their speed of convergence. Wherever possible, comparisons with the corresponding linear adaptive algorithms are made. Both analytical considerations and simulations show, in good agreement, the superiority of the novel WL adaptive algorithms. Nevertheless, all proposed WL algorithms require a slightly lower computational complexity than their linear counterparts.
机译:本文针对调整直接序列码分多址(DS-CDMA)的多址干扰(MAI)抑制的宽线性(WL)最小均方误差(MMSE)滤波器的调整,提出了三种新颖的随机梯度算法介绍和分析。特别是,我们推导了数据辅助WL最小均方(LMS)算法,盲WL最小输出能量(MOE)算法和WL盲LMS(BLMS)算法。我们给出了所提出的WL算法的稳态信号干扰加噪声比(SINR)的解析表达式,并且还研究了它们的收敛速度。尽可能与相应的线性自适应算法进行比较。分析方面的考虑和仿真都很好地表明了新型WL自适应算法的优越性。尽管如此,所有提出的WL算法要求的计算复杂度都比线性算法低。

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