Adaptive set-membership reduced-rank interference suppression for DS-UWB systems

P. Clarke, R. D. Lamare
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引用次数: 6

Abstract

In this work, we propose a novel combined set-membership (SM) reduced-rank interference suppression scheme and consider its application to spread-spectrum multiuser direct sequence ultra-wideband (DS-UWB) systems. In the proposed scheme, the theory of set-membership filtering is applied to the training-based powers of R (PoR) multi-stage Wiener filter (MSWF) reduced-rank process and the reduced-rank filter adaptation. We exploit the variable update rates associated with the set-membership framework so that the dimensionality reducing projection matrix and the reduced-rank filter are updated independently, and only when the estimation error at the output of each process exceeds a predefined, non-time-varying bound. Normalized least mean squares (NLMS) and Bounding Ellipsoidal Adaptive Constrained Least-Squares (BEACON) algorithms are then developed and an analysis of their complexity given. Computer simulations show that the interference suppression performance exhibited by the proposed algorithms exceed that of the conventional reduced-rank NLMS and RLS algorithms whilst achieving a significant reduction in computational complexity.
DS-UWB系统的自适应集隶属度降阶干扰抑制
在这项工作中,我们提出了一种新的组合集隶属度(SM)降阶干扰抑制方案,并考虑了其在扩频多用户直接序列超宽带(DS-UWB)系统中的应用。该方案将集隶属度滤波理论应用于基于训练幂的R (PoR)多阶段维纳滤波器(MSWF)降阶过程和降阶滤波器自适应。我们利用与集合隶属度框架相关的可变更新率,使降维投影矩阵和降阶滤波器独立更新,并且仅当每个过程输出的估计误差超过预定义的非时变界时更新。提出了归一化最小均二乘(NLMS)和边界椭球体自适应约束最小二乘(BEACON)算法,并对其复杂度进行了分析。计算机仿真表明,该算法的干扰抑制性能优于传统的降阶NLMS和RLS算法,同时显著降低了计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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