Title :
A hybrid simplex genetic algorithm for estimating geoacoustic parameters using matched-field inversion
Author :
Musil, Martin ; Wilmut, Michael J. ; Chapman, N. Ross
Author_Institution :
Sch. of Earth & Ocean Sci., Victoria Univ., BC, Canada
fDate :
7/1/1999 12:00:00 AM
Abstract :
Matched-fieId inversion (MFI) undertakes to estimate the geometric and geoacoustic parameters in an ocean acoustic scenario by matching acoustic field data recorded at hydrophone array with numerical calculations of the field. The model which provides the best fit to the data is the estimate of the actual experimental scenario. MFI provides a comparatively inexpensive method for estimating ocean bottom parameters over an extensive area. The basic components of the inversion process are a sound propagation model and matching (minimization) algorithm. Since a typical MFI problem requires a large number of computationally intensive sound propagation calculations, both of these components have to be efficient. In this study, a hybrid inversion algorithm which uses a parabolic equation propagation model and combines the downhill simplex algorithm with genetic algorithms is introduced. The algorithm is demonstrated on synthetic range-dependent shallow-water data generated using the parabolic equation propagation model. The performance for estimating the model parameters is compared for realistic signal-to-noise ratios in the synthetic data
Keywords :
acoustic signal processing; genetic algorithms; geophysical signal processing; inverse problems; minimisation; oceanographic techniques; parameter estimation; seafloor phenomena; underwater acoustic propagation; acoustic field data; downhill simplex algorithm; geoacoustic parameters estimation; geometric parameters; hybrid inversion algorithm; hybrid simplex genetic algorithm; hydrophone array; matched-field inversion; minimization algorithm; ocean acoustic scenario; ocean bottom parameters; parabolic equation propagation model; sound propagation model; synthetic range-dependent shallow-water data; Acoustic measurements; Acoustic propagation; Equations; Genetic algorithms; Geophysical measurements; Minimization methods; Oceans; Parameter estimation; Sea measurements; Sensor arrays;
Journal_Title :
Oceanic Engineering, IEEE Journal of