Geoacoustic inversion with generalized additive models
Document Type
Article
Publication Date
6-1-2019
Abstract
Geoacoustic parameter estimation is presented as a non-linear regression problem where prediction is performed using generalized additive models applied to features extracted from broadband acoustic time-series in a machine learning framework. Qualitatively, it can be seen that signals that have propagated in different environments have distinct structures: in some cases, a single mode is identified, in others, multiple modes can be seen; signals can also be distinguished by different energy levels. Features that are employed here comprise relative amplitudes of distinct peaks in the signals, signal kurtosis, signal strength, decay of the time-series with time, and time difference between distinct peaks of the received signals. Functions are sought that relate sediment sound speed and attenuation to these features. A multivariate generalized additive model is proposed using smoothing splines for the nonlinear regression problem of predicting geoacoustic properties using the features. The spline functions are estimated using noise-free training patterns from known environments. After this training step, the geoacoustic properties are predicted in an efficient manner using noisy testing patterns from a variety of different areas.
Identifier
85066825489 (Scopus)
Publication Title
Journal of the Acoustical Society of America
External Full Text Location
https://doi.org/10.1121/1.5110244
ISSN
00014966
PubMed ID
31255116
First Page
EL463
Last Page
EL468
Issue
6
Volume
145
Grant
NSF-DMS-1331010
Fund Ref
National Science Foundation
Recommended Citation
Piccolo, Jacob; Haramuniz, George; and Michalopoulou, Zoi Heleni, "Geoacoustic inversion with generalized additive models" (2019). Faculty Publications. 7538.
https://digitalcommons.njit.edu/fac_pubs/7538
