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首页> 外文期刊>IEEE transactions on wireless communications >Blind feedforward cyclostationarity-based timing estimation for linear modulations
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Blind feedforward cyclostationarity-based timing estimation for linear modulations

机译:基于盲前馈循环平稳性的线性调制时序估计

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摘要

By exploiting a general cyclostationary (CS) statistics-based framework, this letter develops a rigorous and unified asymptotic (large sample) performance analysis setup for a class of blind feedforward timing epoch estimators for linear modulations transmitted through time nonselective flat-fading channels. Within the proposed CS framework, it is shown that several estimators proposed in the literature can be asymptotically interpreted as maximum likelihood (ML) estimators applied on a (sub)set of the second- (and/or higher) order statistics of the received signal. The asymptotic variance of these ML estimators is established in closed-form expression and compared with the modified Crame/spl acute/r-Rao bound. It is shown that the timing estimator proposed by Oerder and Meyr achieves asymptotically the best performance in the class of estimators which exploit all the second-order statistics of the received signal, and its performance is insensitive to oversampling rates P as long as P/spl ges/3. Further, an asymptotically best consistent estimator, which achieves the lowest asymptotic variance among all the possible estimators that can be derived by exploiting jointly the second- and fourth-order statistics of the received signal, is also proposed.
机译:通过利用通用的基于循环平稳(CS)统计的框架,这封信为一类用于通过时间非选择性平坦衰落信道传输的线性调制的盲前馈定时历元估计器开发了严格而统一的渐近(大样本)性能分析设置。在提出的CS框架内,表明可以将文献中提出的几个估计量渐近地解释为应用于接收信号的第二(和/或更高)阶统计量(子集)的最大似然(ML)估计量。这些ML估计量的渐近方差以闭合形式表示,并与修改的Crame / spl急性/ r-Rao界进行比较。结果表明,由Oerder和Meyr提出的定时估计器在利用所有接收信号的所有二阶统计量的估计器类别中渐近地实现了最佳性能,并且只要P / spl,其性能对过采样率P都不敏感。格斯/ 3。此外,还提出了一种渐近最佳一致性估计量,该估计量在所有可能的估计量中实现了最低的渐近方差,该估计量可以通过联合利用接收信号的二阶和四阶统计量得出。

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