Data-aided ML timing acquisition in ultra-wideband radios

Z. Tian, G. Giannakis
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引用次数: 38

Abstract

Realizing the great potential of ultra-wideband radios depends critically on the success of timing acquisition. To this end, optimum data-aided timing offset estimators are derived in this paper based on the maximum likelihood (ML) criterion. Specifically, generalized likelihood ratio tests are employed to detect an ultra-wideband waveform propagating through dense multipath, as well as to estimate the associated timing and channel parameters in closed form. The acquisition ambiguity induced by multipath spreading and time hopping is resolved via a robust ML formulation. The proposed algorithms only employ digital samples collected at a low symbol or frame rate, thus reducing considerably the implementation complexity and acquisition time.
超宽带无线电中数据辅助ML定时采集
实现超宽带无线电的巨大潜力关键取决于定时采集的成功。为此,本文基于最大似然(ML)准则推导了最佳的数据辅助时序偏移估计器。具体而言,采用广义似然比检验检测密集多径传播的超宽带波形,并以封闭形式估计相关的时序和信道参数。通过鲁棒的机器学习公式解决了由多径扩展和时间跳变引起的获取歧义。所提出的算法仅采用以低符号或帧率采集的数字样本,从而大大降低了实现的复杂性和采集时间。
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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