DocumentCode :
51916
Title :
Reduced Mean-Square Error Quadratic Inverse Spectrum Estimator
Author :
Lepage, Kyle Q. ; Thomson, David J.
Author_Institution :
Dept. of Math. & Stat., Boston Univ., Boston, MA, USA
Volume :
62
Issue :
11
fYear :
2014
fDate :
1-Jun-14
Firstpage :
2958
Lastpage :
2972
Abstract :
A new spectrum estimator is introduced. The new estimator exploits quadratic-inverse theory to attain improved mean-square error performance over the standard multitaper spectrum estimators. The standard, non-adaptive, eigenvalue weighted multitaper estimator is obtained by averaging a high-resolution inconsistent spectrum estimator over the estimator bandwidth. The improved performance of the proposed estimator results from replacing this average with a weighted average computed in the space spanned by the quadratic-inverse basis. The weighting, determined analytically, is chosen such that the resulting estimator minimizes the sum of the variance and the square of the in-band bias; neglecting bias due to spectral leakage and potential bias due to the possible incompleteness of the quadratic-inverse basis. For a white spectrum the neglected bias is found to be as small as that of a standard, non-adaptive multitaper spectrum estimator. The relative reduction of the mean-square error of the proposed spectrum estimator is validated by simulation for an ARMA(4,2) process, and results in a typical mean-square error reduction of 5% for large time-bandwidth parameters and 20% for a time-bandwidth parameter of four, when compared to the non-adaptive, non-eigenvalue weighted multitaper estimator. When compared to the adaptive multitaper spectrum estimator, larger mean-square error improvements are attainable. An expression for the theoretical probability density function for the proposed estimator is given. It is found to be as accurate as the asymptotic probability density function for the standard multitaper estimator.
Keywords :
eigenvalues and eigenfunctions; mean square error methods; microcontrollers; probability; signal resolution; ARMA(4,2) process; asymptotic probability density function; eigenvalue weighted multitaper estimator; high-resolution inconsistent spectrum estimator; in-band bias; mean-square error quadratic inverse spectrum estimator; mean-square error reduction; nonadaptive multitaper spectrum estimator; quadratic-inverse theory; spectral leakage; standard multitaper spectrum estimators; time-bandwidth parameters; Bandwidth; Convolution; Frequency estimation; Mean square error methods; Probability density function; Random processes; Standards; Estimator; mean-square error; quadratic inverse theory; spectrum; time-series;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2014.2313525
Filename :
6778108
Link To Document :
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