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Ziv–Zakai Bounds on Time Delay Estimation in Unknown Convolutive Random Channels

机译:未知卷积随机信道中时延估计的Ziv–Zakai界

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Using the Ziv–Zakai bound (ZZB) methodology, we develop a Bayesian mean-square error bound on time delay estimation (TDE) in convolutive random channels, and compare it with time delay estimator performance and a Cramér–Rao bound. The channel is modeled as a tapped delay line, whose taps are Gaussian random variables that may be nonzero mean and correlated, a model widely adopted in many applications such as wideband fading in a multipath channel. The time delay has a uniform prior distribution. A ZZB is developed that incorporates the prior on the random time delay, as well as the convolutive random Gaussian channel, and does not assume the receiver has knowledge of the channel realization. The ZZB provides good performance prediction for maximum a posteriori (MAP) time delay estimation, tracking the low, medium, and high signal-to-noise ratio (SNR) regimes. The convolutive channel model includes important special cases, such as narrowband Gaussian channels corresponding to Rayleigh/Rician fading, wideband multipath channels with a power decay profile (such as exponential decay), and known channels. We show that the associated Cramér–Rao bound is tight only at high SNR, whereas the ZZB predicts threshold behavior and TDE breakdown as the SNR decreases. When compared to a ZZB that assumes knowledge of the channel realization, the ZZB developed here provides a more realistic and tighter bound, revealing the performance loss due to lack of channel knowledge. The MAP estimator incorporates knowledge of the channel statistics, and so performs much better than a maximum likelihood estimator that minimizes mean square error but does not use knowledge of the random channel statistics. Several examples illustrate the estimator and bound behaviors.
机译:使用Ziv–Zakai界线(ZZB)方法,我们在卷积随机信道中开发了基于时延估计(TDE)的贝叶斯均方误差界线,并将其与时延估计器性能和Cramér–Rao界线进行比较。该信道被建模为抽头延迟线,其抽头是可能为非零均值且相关的高斯随机变量,该模型在许多应用中被广泛采用,例如多径信道中的宽带衰落。时间延迟具有统一的先验分布。开发了一种ZZB,它结合了随机时间延迟的先验知识以及卷积的随机高斯信道,并且不假定接收器具有信道实现的知识。 ZZB为最大后验(MAP)时间延迟估计,跟踪低,中和高信噪比(SNR)方案提供了良好的性能预测。卷积信道模型包括重要的特殊情况,例如与瑞利/里奇衰落相对应的窄带高斯信道,具有功率衰减曲线(例如指数衰减)的宽带多径信道以及已知信道。我们显示,仅在高SNR时,相关的Cramér-Rao边界是紧的,而ZZB则随SNR的降低而预测阈值行为和TDE击穿。与假定通道实现知识的ZZB相比,此处开发的ZZB提供了更现实,更严格的界限,揭示了由于缺乏通道知识而导致的性能损失。 MAP估计器结合了信道统计信息,因此其性能比最大似然估计器好得多,后者使均方误差最小,但不使用随机信道统计信息。几个示例说明了估计量和绑定行为。

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