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Discrete-Time Estimation of Second-Order Statistics of Generalized Almost-Cyclostationary Processes

机译:广义近循环静止过程二阶统计量的离散时间估计

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摘要

In this paper, the problem of estimating second-order statistics of continuous-time generalized almost-cyclostationary (GACS) processes is addressed. GACS processes in the wide sense have autocorrelation function almost-periodic in time whose generalized Fourier series expansion has both frequencies and coefficients that depend on the lag shifts. Almost-cyclostationary (ACS) processes are obtained as a special case when the frequencies do not depend on the lag shifts. ACS processes filtered by Doppler channels and communications signals with time-varying parameters are further examples. It is shown that continuous-time GACS processes do not have a discrete-time counterpart. The discrete-time cyclic cross-correlogram of the discrete-time ACS processes obtained by uniformly sampling GACS processes is considered as estimator of samples of the continuous-time cyclic cross-correlation function. The asymptotic performance analysis is carried out by resorting to the hybrid cyclic cross-correlogram which is partially continuous-time and partially discrete-time. Its mean-square consistency and asymptotic complex Normality as the number of data-samples approaches infinity and the sampling period approaches zero are proved under mild conditions on the regularity of the Fourier series coefficients and the finite or practically finite memory of the processes expressed in terms of summability of cumulants. It is shown that the asymptotic properties of the hybrid cyclic cross-correlogram are coincident with those of the continuous-time cyclic cross-correlogram. Hence, discrete-time estimation does not give rise to any loss in asymptotic performance with respect to continuous-time estimation.
机译:该文解决了连续时间广义近循环平稳(GACS)过程的二阶统计估计问题。广义的GACS过程在时间上具有近乎周期性的自相关函数,其广义傅里叶级数展开的频率和系数都取决于滞后位移。当频率不依赖于滞后偏移时,几乎可以循环平稳 (ACS) 过程作为特殊情况获得。由多普勒信道滤波的ACS过程和具有时变参数的通信信号是进一步的例子。结果表明,连续时间GACS过程没有离散时间对应物。通过均匀采样GACS过程得到的离散时间ACS过程的离散时间循环交叉对数图被认为是连续时间循环互相关函数样本的估计器。采用部分连续时间和部分离散时间的混合循环交叉对照图进行渐近性能分析。在温和条件下,傅里叶级数系数的正则性和过程的有限或几乎有限记忆证明了其均方一致性和渐近复数正态性,数据样本数趋近无穷大,采样周期接近零。结果表明,杂交交叉对照图的渐近特性与连续时间循环交叉对照图的渐近特性一致。因此,离散时间估计不会导致与连续时间估计相关的渐近性能的任何损失。

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