Title :
Near-optimal range and depth estimation using a vertical array in a correlated multipath environment
Author :
Yuan, Yun X. ; Carter, G. Clifford ; Salt, J. Eric
Author_Institution :
Lucent Technol., Allentown, PA, USA
fDate :
2/1/2000 12:00:00 AM
Abstract :
This paper proposes a near-optimal procedure to localize a single stationary source in a two-path underwater acoustic environment. The investigation is for an M-element vertical array with omnidirectional sensors. The range and depth estimators are developed using a linear least-squares technique when a set of auto- and cross-correlators is used for time difference of arrival (TDOA) estimates. A weighting matrix is derived to achieve the approximate maximum likelihood (ML) performance of the weighted least-squares range and depth estimators. The expressions for error variances and covariances of the range and depth estimates are derived with a small error analysis technique. It is verified analytically that the error covariance matrix of the weighted least-squares solutions reaches the Cramer-Rao lower bound in the small error region. The correlation of the range and depth estimation errors is investigated. Results show that the range and depth estimation errors are highly correlated in a multipath environment. The accuracy properties of the proposed multipath localization procedure are analyzed using different array configurations. The results show that the performances of the range and depth estimators are significantly improved if the linear-dependent TDOA estimates are included for localizing and that the unweighted range and depth estimators, using the entire set of TDOAs, are approximately optimal for most of the applications. The theoretical development of error variance and covariance expressions of the range and depth estimates, which incorporates the correlation in the TDOA estimates, is corroborated with Monte Carlo simulations
Keywords :
Monte Carlo methods; array signal processing; covariance matrices; delay estimation; least squares approximations; maximum likelihood estimation; multipath channels; sonar arrays; Cramer-Rao lower bound; M-element vertical array; Monte Carlo simulations; TDOA; array configurations; auto-correlators; correlated multipath environment; covariances; cross-correlator; depth estimation; error covariance matrix; error variances; linear least-squares technique; localization procedure; maximum likelihood performance; near-optimal procedure; omnidirectional sensors; range and depth estimation; small error analysis technique; stationary source; time difference of arrival; two-path underwater acoustic environment; vertical array; weighted least-squares solutions; weighting matrix; Acoustic arrays; Acoustic sensors; Covariance matrix; Error analysis; Estimation error; Maximum likelihood estimation; Sensor arrays; Signal to noise ratio; Time difference of arrival; Underwater acoustics;
Journal_Title :
Signal Processing, IEEE Transactions on