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Blind adaptive cyclic filtering and beamforming algorithms.

机译:盲自适应循环滤波和波束成形算法。

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摘要

In a multi-user communication system such as the wireline or wireless communication systems, a commonly encountered problem is the extraction of the desired signal from Co-Channel Interference (CCI) and Adjacent Channel Interference (ACI). To combat the CCI and ACI, the conventional filtering techniques are unable to carry out the job. The optimum FREquency-SHift (FRESH) filtering technique proposed by W. A. Gardner enables us to suppress spectrally overlapped signals by using the cyclostationarity of the signals. However, to design the optimum FRESH filter, we must have the statistical knowledge of the desired signal or a training signal which, in practice, are not often available. This thesis proposes a blind adaptive FRESH filtering algorithm which does not need a training signal to extract the desired signal from spectrally overlapping interference. We call this new technique Blind Adaptive (BA)-FRESH filtering. Comparing the BA-FRESH filter with the FRESH filter with a training signal which is called Trained Adaptive FRESH (TA-FRESH) filter, it has been proved that BA-FRESH and TA-FRESH have same performances when the data length is infinite.; On the other hand, various cyclic beamforming techniques such as the spectral Self-COherence REstoral (SCORE), the Cyclic Adaptive Beamforming (CAB), the Constrained Cyclic Adaptive Beamforming (C-CAB) and the Robust Cyclic Adaptive Beamforming (R-CAB) algorithms can be used to combat CCI and ACI efficiently. However, when the desired signal and the interferences are very closely spaced in arrival directions, system performance improvement using these cyclic beamforming alone is limited because the beamformers are just spatial filters. By combining the spatial beamforming with the temporal FRESH filtering, a large system performance improvement may be achieved due to the full utilization of the signal information in both time and space domains. A Blind Adaptive Space-Time (BLAST) algorithm is proposed in this thesis. The BLAST algorithm is a blind adaptive time varying space-time filter. The BLAST algorithm can be viewed as the expansion of the BA-FRESH filtering algorithm to the space-time domain. Comparing the BLAST filter with the space-time filter with a training signal which is called Trained Adaptive Space-Time (TAST) filter, it has been proved that BLAST and TAST have same performances when the data length is infinite. When the data length is finite, there are performance differences between BLAST and TAST. Convergence of the BLAST and TAST filter coefficients, the finite sample output signal to interference plus noise ratio (SINR), and the finite sample output mean square error (MSE) are analyzed. (Abstract shortened by UMI.)
机译:在诸如有线或无线通信系统的多用户通信系统中,普遍遇到的问题是从同频干扰(CCI)和邻频干扰(ACI)提取期望的信号。为了与CCI和ACI对抗,常规的过滤技术无法执行这项工作。 W. A. Gardner提出的最佳频率-频移(FRESH)滤波技术使我们能够利用信号的循环平稳性来抑制频谱重叠的信号。但是,要设计最佳的FRESH滤波器,我们必须对所需信号或训练信号的统计知识有所了解,而在实践中这些信号或训练信号通常并不可用。本文提出了一种盲自适应FRESH滤波算法,该算法不需要训练信号就可以从频谱重叠干扰中提取出期望信号。我们称这种新技术为盲自适应(BA)-FRESH滤波。将BA-FRESH滤波器与FRESH滤波器与称为训练自适应FRESH(TA-FRESH)滤波器的训练信号进行比较,已证明BA-FRESH和TA-FRESH在数据长度为无限时具有相同的性能。另一方面,各种循环波束成形技术,例如频谱自相干存储(SCORE),循环自适应波束成形(CAB),约束循环自适应波束成形(C-CAB)和鲁棒循环自适应波束成形(R-CAB)可以使用算法有效地对抗CCI和ACI。但是,当所需信号和干扰在到达方向上间隔很近时,由于波束形成器只是空间滤波器,因此仅使用这些循环波束形成的系统性能改进受到限制。通过将空间波束成形与时间FRESH滤波相结合,由于在时域和空域中都充分利用了信号信息,因此可以实现较大的系统性能提升。本文提出了一种盲自适应空时(BLAST)算法。 BLAST算法是一种盲自适应时变时空滤波器。 BLAST算法可以看作是BA-FRESH滤波算法向时空域的扩展。将BLAST滤波器与带有训练信号的时空滤波器(称为训练自适应时空(TAST)滤波器)进行比较,已证明,当数据长度无限时,BLAST和TAST具有相同的性能。当数据长度有限时,BLAST和TAST之间存在性能差异。分析了BLAST和TAST滤波器系数,有限样本输出信噪比(SINR)和有限样本输出均方误差(MSE)的收敛性。 (摘要由UMI缩短。)

著录项

  • 作者

    Zhang, Jie.;

  • 作者单位

    McMaster University (Canada).;

  • 授予单位 McMaster University (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 186 p.
  • 总页数 186
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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