Title :
Bayesian geoacoustic inversion for the Inversion Techniques 2001 Workshop
Author :
Lapinski, Anna-Liesa S. ; Dosso, Stan E.
Author_Institution :
Sch. of Earth & Ocean Sci., Victoria Univ., BC, Canada
fDate :
7/1/2003 12:00:00 AM
Abstract :
This paper applies a Bayesian formulation to range-dependent geoacoustic inverse problems. Two inversion methods, a hybrid optimization algorithm and a Bayesian sampling algorithm, are applied to some of the 2001 Inversion Techniques Workshop benchmark data. The hybrid inversion combines the local (gradient-based) method of downhill simplex with the global search method of simulated annealing in an adaptive algorithm. The Bayesian inversion algorithm uses a Gibbs sampler to estimate properties of the posterior probability density, such as mean and maximum a posteriori parameter estimates, marginal probability distributions, highest-probability density intervals, and the model covariance matrix. The methods are applied to noise-free and noisy benchmark data from shallow ocean environments with range-dependent geophysical and geometric properties. An under-parameterized approach is applied to determine the optimal model parameterization consistent with the resolving power of the acoustic data. The Bayesian inversion method provides a complete solution including quantitative uncertainty estimates and correlations, while the hybrid inversion method provides parameter estimates in a fraction of the computation time.
Keywords :
Bayes methods; acoustic measurement; covariance matrices; gradient methods; inverse problems; oceanographic techniques; simulated annealing; statistical analysis; underwater sound; Bayesian geoacoustic inversion; Bayesian sampling algorithm; Gibbs sampler; MFI; acoustic data resolving power; adaptive algorithm; covariance matrix model; downhill simplex; global search method; gradient-based method; highest-probability density intervals; hybrid optimization algorithm; marginal probability distributions; matched-field inversion; mean/maximum a posteriori parameter estimates; noise-free data; noisy data; posterior probability density; range-dependent geoacoustic inverse problems; shallow ocean environments; simulated annealing; uncertainty correlations; uncertainty estimates;
Journal_Title :
Oceanic Engineering, IEEE Journal of
DOI :
10.1109/JOE.2003.816696