In this work we study the performance of elevation estimators and lower bou
nds of the estimation error variance for a low angle target in a smooth sea
scenario using an antenna array. The article is structured around some key
assumptions on multipath knowledge, signal parameterization and noise cova
riance. We prove that the Cramer-Rao bound is highly dependent on the multi
path model, while it is the same for the different signal parameterizations
, and that it is independent of the noise covariance. The Cramer-Rao bound
is sometimes too optimistic and not achievable. The tighter Barankin bound
is derived to predict the threshold behavior seen at low SNR. Simulations s
how that the maximum likelihood methods are statistically efficient and ach
ieve the theoretical lower bound on error variance, in the case of high eno
ugh SNR. Finally we show that the bounds can be used to design an improved
array structure and study the influence of multiple frequencies. (C) 2000 A
cademic Press.