End-to-End Geoacoustic Inversion With Neural Networks in Shallow Water Using a Single Hydrophone

被引:0
|
作者
Vardi, Ariel [1 ,2 ]
Bonnel, Julien [2 ]
机构
[1] MIT, Dept Mech Engn, Cambridge, MA 02139 USA
[2] Woods Hole Oceanog Inst, Appl Ocean Phys & Engn Dept, Woods Hole, MA 02543 USA
关键词
Deep learning; geoacoustic inversion; New England mud patch; SBCEX; seabed characterization experiment; underwater acoustics; CLASSIFICATION;
D O I
10.1109/JOE.2023.3331423
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
This article presents a deep learning (DL) method to perform joint source detection and environmental inversion of low-frequency dispersed impulse signals recorded on a single hydrophone, in a fully automated way, with the inversion part covering both source localization (range and depth) and geoacoustic inversion (with the seabed modeled as a single sediment layer over a basement). The benchmark used for testing the resulting DL models are signals that were generated by navy explosives [signal underwater sound (SUS) charges] deployed during the Seabed Characterization Experiment 2022 performed in the New England Mud-patch (NEMP) off the coast of Massachusetts. A DL model based on a 1-D convolutional neural network is trained using simulated data. The resulting model is used to automatically process 816 h of acoustic data containing 289 SUS events. All the SUS events are detected (with no false positives), localized with a mean error of 400 m, and used to invert for seafloor geoacoustic parameters. The predicted parameters are in agreement with results obtained using classical inversion schemes. Using a trained DL model requires little to no computation time and power, compared to classical methods, which employ high-cost computational schemes. This advantage enables efficient inversion of enough SUS events (289) to spatially cover the NEMP, and inversion results suggest spatial variability in the mud sound speed.
引用
收藏
页码:380 / 389
页数:10
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