Gibbs sampling optimization in underwater sound problems
Document Type
Conference Proceeding
Publication Date
12-1-2001
Abstract
Parameter estimation in the ocean can be achieved in an optimal fashion by implementing approaches maximizing posterior probability distribution functions. Such approaches are, however, computationally intensive, often requiring the computation of complex probability distributions and searches for global maxima in spaces of a high dimension. In this work, it is shown how Gibbs Sampling, a Markov Chain Monte Carlo method, can be employed for the fast computation of posterior probability distributions, resulting in accurate and fast estimation of parameters related to problems in underwater acoustics. Source localization results obtained through maximum a posteriori estimation and optimization with Gibbs Sampling are presented and compared to results obtained with conventional methods.
Identifier
0035669029 (Scopus)
Publication Title
Oceans Conference Record IEEE
ISSN
01977385
First Page
782
Last Page
785
Volume
2
Recommended Citation
Michalopoulou, Z. H., "Gibbs sampling optimization in underwater sound problems" (2001). Faculty Publications. 15005.
https://digitalcommons.njit.edu/fac_pubs/15005
