A Frequency-Velocity CNN for Developing Near-Surface 2D Vs Images from
Linear-Array, Active-Source Wavefield Measurements
- URL: http://arxiv.org/abs/2207.09580v1
- Date: Tue, 19 Jul 2022 22:48:43 GMT
- Title: A Frequency-Velocity CNN for Developing Near-Surface 2D Vs Images from
Linear-Array, Active-Source Wavefield Measurements
- Authors: Aser Abbas (1), Joseph P. Vantassel (2), Brady R. Cox (1), Krishna
Kumar (3), Jodie Crocker (3) ((1) Utah State University, (2) Virginia Tech,
(3) The University of Texas at Austin)
- Abstract summary: This paper presents a frequency-velocity convolutional neural network (CNN) for rapid, non-invasive 2D shear wave velocity (Vs) imaging of near-surface geo-materials.
operating in the frequency-velocity domain allows for significant flexibility in the linear-array, active-source experimental testing configurations.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents a frequency-velocity convolutional neural network (CNN)
for rapid, non-invasive 2D shear wave velocity (Vs) imaging of near-surface
geo-materials. Operating in the frequency-velocity domain allows for
significant flexibility in the linear-array, active-source experimental testing
configurations used for generating the CNN input, which are normalized
dispersion images. Unlike wavefield images, normalized dispersion images are
relatively insensitive to the experimental testing configuration, accommodating
various source types, source offsets, numbers of receivers, and receiver
spacings. We demonstrate the effectiveness of the frequency-velocity CNN by
applying it to a classic near-surface geophysics problem, namely, imaging a
two-layer, undulating, soil-over-bedrock interface. This problem was recently
investigated in our group by developing a time-distance CNN, which showed great
promise but lacked flexibility in utilizing different field-testing
configurations. Herein, the new frequency-velocity CNN is shown to have
comparable accuracy to the time-distance CNN while providing greater
flexibility to handle varied field applications. The frequency-velocity CNN was
trained, validated, and tested using 100,000 synthetic near-surface models. The
ability of the proposed frequency-velocity CNN to generalize across various
acquisition configurations is first tested using synthetic near-surface models
with different acquisition configurations from that of the training set, and
then applied to experimental field data collected at the Hornsby Bend site in
Austin, Texas, USA. When fully developed for a wider range of geological
conditions, the proposed CNN may ultimately be used as a rapid, end-to-end
alternative for current pseudo-2D surface wave imaging techniques or to develop
starting models for full waveform inversion.
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