Deep Learning-Based 3D Seismic Velocity Inversion Under Dual-Domain Sparse Representation
Guoxin Chen, Wenjie Wang, Haiyang Lu, Jinxin Chen

TL;DR
This paper introduces a dual-domain sparse deep learning framework using DCT for efficient and accurate 3D seismic velocity inversion, addressing computational cost and over-smoothing issues in traditional methods.
Contribution
The study proposes a novel DCT-based sparse representation combined with a geometry-adaptive network, significantly improving inversion accuracy and efficiency over existing methods.
Findings
Reduces training time by over 90%
Achieves higher PSNR and SSIM scores
Effectively recovers salt boundaries and stratigraphy
Abstract
Three-dimensional seismic full-waveform inversion (FWI) provides high-fidelity subsurface velocity models but is restricted by high computational cost, strong nonlinearity, cycle-skipping, and heavy dependence on initial models. Although data-driven deep learning mitigates these issues, it still produces over-smoothed results with limited physical interpretability and low efficiency. To address these challenges, we propose a dual-domain sparse deep learning framework for 3D seismic velocity inversion using the discrete cosine transform (DCT). DCT compresses seismic data and velocity models into a sparse domain to remove redundancy while preserving key structural features. A geometry-adaptive network named SEDCN (Squeeze-and-Excitation Deformable Convolutional Network) is adopted to better capture irregular salt-dome geometries and sharp velocity boundaries. We train and validate the…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · Reservoir Engineering and Simulation Methods
