最坏情况中心频率估计

R. McKilliam, I. Clarkson, Troy A. Kilpatrick
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引用次数: 1

摘要

本文分析了Lank、Reed和Pollon[1]提出的中心频率估计器。该估计器具有鲁棒性好、计算简单等优点,在实际应用中得到广泛应用。估计器在应用于正弦信号时的行为以前已经被研究过。本文分析了非正弦信号的行为。在一般情况下,随着信号样本数量的增加,估计量在统计上是一致的,并且渐近正态分布。渐近方差取决于底层信号的频谱,特别是其带宽。正弦信号显示最小化这种方差,因此代表最佳情况的行为。在带宽限制下,当底层信号由带宽分隔的两个正弦波组成时,会出现最坏情况。当底层信号未知时,这种最坏情况的行为提供了误差的上限和相应的置信区间。上界在诸如电子支持等可能不知道接收信号具体形式的应用中是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Worst-case centre-frequency estimation
This paper analyzes the centre-frequency estimator proposed by Lank, Reed, and Pollon [1]. This estimator is popular in practical applications due to its robustness and computational simplicity. The estimator's behaviour when applied to sinusoidal signals has previously been studied. The behaviour for non-sinusoidal signals is analysed here. Under general conditions the estimator is shown to be statistically consistent and asymptotically normally distributed as the number of samples of the signal grows. The asymptotic variance is shown to depend upon the spectrum of the underlying signal, and in particular its band-width. Sinusoidal signals are shown to minimise this variance and so represent the best-case behaviour. Under a bandwidth constraint, the worst-case behaviour is shown to occur when the underlying signal consists of two sinusoids separated by the bandwidth. This worst-case behaviour provides upper bounds on the error and corresponding confidence intervals when the underlying signal is unknown. The upper bounds are useful in applications such as electronic support where the specific form of received signals may not be known.
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