STA-Fault3D: A Lightweight 3D Seismic Fault Detection Network Based on Spatial–Temporal Asymmetric Convolution Set

Research output: Contribution to journalArticlepeer-review

Abstract

Fault identification is vital for geological structure analysis and the optimization of oil–gas extraction. Deep neural networks, especially U-Net and its variants, are widely used for seismic fault interpretation. However, when applied to 3D seismic data volume, these models typically require substantial computation resources and memory consumption. For one reason, they do not take into consideration the obvious differences in characteristics of seismic data in space and time dimensions; therefore, they require a huge number of parameters to capture inherent information for seismic fault detection. This paper presents a lightweight 3D seismic fault interpretation network based on a spatial–temporal asymmetric convolution set (STA-Fault3D) to mitigate the aforementioned issue. STA-Fault3D uses the spatial–temporal asymmetric convolution set to construct a lightweight network and take into consideration seismic data dimension discrepancies. Multi-scale feature fusion operation and an enhanced-training workflow are adopted to improve the performance of the network on field data. Compared with the classic model, FaultSeg3D, it demonstrates improved performance on fault detection continuity with only 12.33% of the parameters and 18.57% of the computational quantity. Compared with the state-of-the-art (SOTA) lightweight network, Fault3DNnet, it reduces parameters by 10% and computational quantity by 4.2% for marginally improved detection results.

Original languageEnglish
Article number12153
JournalApplied Sciences (Switzerland)
Volume15
Issue number22
DOIs
StatePublished - Nov 2025

Keywords

  • deep learning
  • multi-scale feature fusion
  • seismic fault interpretation
  • spatial–temporal asymmetric convolution set
  • training enhancement

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