Title :
Consistent estimation of the cyclic autocorrelation
Author :
Genossar, Michael J. ; Lev-Ari, Hanoch ; Kailath, Thomas
Author_Institution :
ECI Telecom, Petah Tikva, Israel
fDate :
3/1/1994 12:00:00 AM
Abstract :
The cyclic autocorrelation is often used to describe nonstationary random processes. The authors investigate the conditions under which the cyclic autocorrelation can be estimated consistently in mean square for discrete time Gaussian processes. They extend and generalize results of Hurd (1989) and refine results of Boyles and Gardner (1983). They derive necessary and sufficient conditions for consistency in mean square of an estimator, which are in the form of a single sum of autocorrelation coefficients, in the form of a double sum of autocorrelation coefficients, in the bifrequency domain and in terms of the average spectrum. They also discuss the rate of convergence for this estimator
Keywords :
convergence; correlation theory; estimation theory; frequency-domain analysis; random processes; signal processing; spectral analysis; stochastic processes; autocorrelation coefficients; average spectrum; bifrequency domain; convergence rate; cyclic autocorrelation; discrete time Gaussian processes; estimation; mean square; necessary conditions; nonstationary random processes; signal processing; sufficient conditions; Autocorrelation; Convergence; Direction of arrival estimation; Filtering; Frequency; Gaussian processes; Random processes; Reactive power; Signal processing; Sufficient conditions;
Journal_Title :
Signal Processing, IEEE Transactions on