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GPR Full-Waveform Inversion through Adaptive Filtering of Model Parameters and Gradients Using CNN

Authors :
Jiang, Peng
Wang, Kun
Wang, Jiaxing
Feng, Zeliang
Qiao, Shengjie
Deng, Runhuai
Zhang, Fengkai
Publication Year :
2024

Abstract

GPR full-waveform inversion optimizes the subsurface property model iteratively to match the entire waveform information. However, the model gradients derived from wavefield continuation often contain errors, such as ghost values and excessively large values at transmitter and receiver points. Furthermore, models updated based on these gradients frequently exhibit unclear characterization of anomalous bodies or false anomalies, making it challenging to obtain accurate inversion results. To address these issues, we introduced a novel full-waveform inversion (FWI) framework that incorporates an embedded convolutional neural network (CNN) to adaptively filter model parameters and gradients. Specifically, we embedded the CNN module before the forward modeling process and ensured the entire FWI process remains differentiable. This design leverages the auto-grad tool of the deep learning library, allowing model values to pass through the CNN module during forward computation and model gradients to pass through the CNN module during backpropagation. Experiments have shown that filtering the model parameters during forward computation and the model gradients during backpropagation can ultimately yield high-quality inversion results.<br />Comment: 16 pages, 6 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.08568
Document Type :
Working Paper