DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS

Subject of study is the performance of methods of the spectral analysis in the presence of outliers. The purpose of this paper is to increase the efficiency of spectral analysis (i.e. to reduce the root mean square error (RMSE) of direction-of-arrival (DOA) estimation based on root similarity approa...

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Main Author: Volodymyr Vasylyshyn
Format: Article
Language:English
Published: National Technical University "Kharkiv Polytechnic Institute" 2020-10-01
Series:Сучасні інформаційні системи
Subjects:
Online Access:http://ais.khpi.edu.ua/article/view/213325
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spelling doaj-141d0188f1474fc8a38a304e8afb643c2021-05-26T21:14:38ZengNational Technical University "Kharkiv Polytechnic Institute"Сучасні інформаційні системи2522-90522020-10-014310.20998/2522-9052.2020.3.10DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODSVolodymyr Vasylyshyn0Ivan Kozhedub Kharkiv National Air Force University, KharkivSubject of study is the performance of methods of the spectral analysis in the presence of outliers. The purpose of this paper is to increase the efficiency of spectral analysis (i.e. to reduce the root mean square error (RMSE) of direction-of-arrival (DOA) estimation based on root similarity approach initially proposed by A. Gershman. The used methods are: spectral analysis methods, pattern recognition methods, digital statistical modeling methods. The following results were obtained. The root classification approach is used in the case of joint application of two types of data covariance matrix (standard covariance matrix (CM) and estimate of CM with Toeplitz structure). This approach removes the outliers (outlying roots) from preliminary DOA estimates (roots corresponding to the preliminary DOAs). The modification of initial root classification approach is proposed. It consists of avoiding averaging of DOA estimates obtained by estimator for the different CM at high signal-to-noise ratios (SNRs). This step for considered case allows to improve the performance of DOA estimation using the root classification approach. Simulation results are presented confirming the performance of proposed approach. Conclusions. The performance improvement of the subspace-based methods of spectral analysis can be attained by removing the outliers from the initial DOA estimates. The simultaneous application of classical second-order CM and estimate of structured CM gives two sets of DOA estimates (roots of polynomials). Root classification approach processes these sets and improves the performance of DOA estimation. The modification proposed in the paper gives the additional advantage at high SNR. The considered approach is also can be used together with other polynomial rooting methods of DOA estimation.http://ais.khpi.edu.ua/article/view/213325Direction-of–arrival estimationKarhunen-Loève transformationspectral decomposition of correlation matrixspectral analysis methodspattern recognition
collection DOAJ
language English
format Article
sources DOAJ
author Volodymyr Vasylyshyn
spellingShingle Volodymyr Vasylyshyn
DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
Сучасні інформаційні системи
Direction-of–arrival estimation
Karhunen-Loève transformation
spectral decomposition of correlation matrix
spectral analysis methods
pattern recognition
author_facet Volodymyr Vasylyshyn
author_sort Volodymyr Vasylyshyn
title DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
title_short DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
title_full DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
title_fullStr DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
title_full_unstemmed DOA ESTIMATION BASED ON PROXIMITY OF THE ROOTS OF SEVERAL POLYNOMIALS OF SUPERRESOLUTION METHODS
title_sort doa estimation based on proximity of the roots of several polynomials of superresolution methods
publisher National Technical University "Kharkiv Polytechnic Institute"
series Сучасні інформаційні системи
issn 2522-9052
publishDate 2020-10-01
description Subject of study is the performance of methods of the spectral analysis in the presence of outliers. The purpose of this paper is to increase the efficiency of spectral analysis (i.e. to reduce the root mean square error (RMSE) of direction-of-arrival (DOA) estimation based on root similarity approach initially proposed by A. Gershman. The used methods are: spectral analysis methods, pattern recognition methods, digital statistical modeling methods. The following results were obtained. The root classification approach is used in the case of joint application of two types of data covariance matrix (standard covariance matrix (CM) and estimate of CM with Toeplitz structure). This approach removes the outliers (outlying roots) from preliminary DOA estimates (roots corresponding to the preliminary DOAs). The modification of initial root classification approach is proposed. It consists of avoiding averaging of DOA estimates obtained by estimator for the different CM at high signal-to-noise ratios (SNRs). This step for considered case allows to improve the performance of DOA estimation using the root classification approach. Simulation results are presented confirming the performance of proposed approach. Conclusions. The performance improvement of the subspace-based methods of spectral analysis can be attained by removing the outliers from the initial DOA estimates. The simultaneous application of classical second-order CM and estimate of structured CM gives two sets of DOA estimates (roots of polynomials). Root classification approach processes these sets and improves the performance of DOA estimation. The modification proposed in the paper gives the additional advantage at high SNR. The considered approach is also can be used together with other polynomial rooting methods of DOA estimation.
topic Direction-of–arrival estimation
Karhunen-Loève transformation
spectral decomposition of correlation matrix
spectral analysis methods
pattern recognition
url http://ais.khpi.edu.ua/article/view/213325
work_keys_str_mv AT volodymyrvasylyshyn doaestimationbasedonproximityoftherootsofseveralpolynomialsofsuperresolutionmethods
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