Neural Network Application in Dispersion Curve Inversion of Seabed Geoacoustic Parameters

Author:

Zhang Peng,Pan Xiang

Abstract

Abstract This paper estimates seabed shear-wave velocities and the thickness of the surface sediments using Scholte wave dispersion curves extracted from data. Common surface wave dispersion curve inversion methods are divided into: local linearization methods and global optimization methods. These are model-driven, the inversion process takes a lot of time, and it is easy to get a local optimum, and the inversion results are inaccurate. Aiming at the shortcomings of the existing surface wave dispersion inversion methods, this paper introduces an inversion method based on neural network, and fits the Scholte wave dispersion curve to obtain the geoacoustic parameters of the surface sediments. Neural network inversion is data-driven, and the model is extracted from the data, which can improve the speed and accuracy of surface wave inversion. By simulating the shallow sea model, better results are obtained, and at the same time, the experimental data is used for calculation, the inversion results are close to the traditional methods, and the inversion speed is improved.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference8 articles.

1. Observation and inversion of very-low-frequency seismo-acoustic fields in the South China Sea;Du;The Journal of the Acoustical Society of America,2020

2. Integrated Geophysical Analyses of Shallow-Water Seismic Imaging With Scholte Wave Inversion: The Northern Adriatic Sea Case Study;Giustiniani;Frontiers in Earth Science,2020

3. Shear-wave velocity profiling according to three alternative approaches: A comparative case study;Moro,2016

4. Shear wave tomography beneath the United States using a joint inversion of surface and body waves;Golos;Journal of Geophysical Research: Solid Earth,2018

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