Deep-Learning Inversion of Seismic Data
Shucai Li, Bin Liu, Yuxiao Ren, Yangkang Chen, Senlin Yang, Yunhai, Wang, Peng Jiang

TL;DR
This paper introduces SeisInvNets, a deep learning approach for seismic data inversion that directly reconstructs velocity models from seismic signals, addressing limitations of traditional iterative methods.
Contribution
The paper presents a novel end-to-end seismic inversion network that enhances seismic traces with neighborhood and global context, improving velocity model reconstruction from seismic data.
Findings
SeisInvNets outperform baseline methods on synthesized datasets.
The method produces velocity models consistent with target structures.
The approach demonstrates promising generalization on synthetic data.
Abstract
We propose a new method to tackle the mapping challenge from time-series data to spatial image in the field of seismic exploration, i.e., reconstructing the velocity model directly from seismic data by deep neural networks (DNNs). The conventional way of addressing this ill-posed inversion problem is through iterative algorithms, which suffer from poor nonlinear mapping and strong nonuniqueness. Other attempts may either import human intervention errors or underuse seismic data. The challenge for DNNs mainly lies in the weak spatial correspondence, the uncertain reflection-reception relationship between seismic data and velocity model, as well as the time-varying property of seismic data. To tackle these challenges, we propose end-to-end seismic inversion networks (SeisInvNets) with novel components to make the best use of all seismic data. Specifically, we start with every seismic…
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