Abstract

OF THE DISSERTATION Underwater Direction-of-Arrival Finding: Maximum Likelihood Estimation and Performance Analysis by Tao Li Doctor of Philosophy in Electrical Engineering Washington University in St. Louis, May 2012 Research Advisor: Dr. Arye Nehorai In this dissertation, we consider the problems of direction-of-arrival (DOA) finding using acoustic sensor arrays in underwater scenarios, and develop novel signal models, maximum likelihood (ML) estimation methods, and performance analysis results. We first examine the underwater scenarios where the noise on sensor arrays are spatially correlated, for which we consider using sparse sensor arrays consisting of widely separated sub-arrays and develop ML DOA estimators based on the ExpectationMaximization scheme. We examine both zero-mean and non-zero-mean Gaussian incident signals and provide detailed estimation performance analysis. Our results show that non-zero means in signals improve the accuracy of DOA estimation. Then we consider the problem of DOA estimation of marine vessel sources such as ships, submarines, or torpedoes, which emit acoustic signals containing both sinusoidal and random components. We propose a mixed signal model and develop an ML estimator for narrow-band DOA finding of such signals and then generalize the ii results to the wide-band case. We provide thorough performance analysis for the proposed signal model and estimators. We show that our mixed signal model and ML estimators improve the DOA estimation performance in comparison with the typical stochastic ones assuming zero-mean Gaussian signals. At last, we derive a Barankin-type bound (BTB) on the mean-square error of DOA estimation using acoustic sensor arrays. The typical DOA estimation performance evaluation are usually based on the Cramer-Rao Bound (CRB), which cannot predict the threshold region of signal-to-noise ratio (SNR), below which the accuracy of the ML estimation degrades rapidly. Identification of the threshold region has important applications for DOA estimation in practice. Our derived BTB provides an approximation to the SNR threshold region.

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