Petroleum Science >2026, Issue4: 1829-1841 DOI: https://doi.org/10.1016/j.petsci.2025.11.023
Physics-informed neural network for reconstruction of seismic data under compressed sensing sampling Open Access
文章信息
作者:Yin-Shuo Li, Wen-Kai Lu, Xiao-Gang Huang, Ji-Cai Ding, Cao Song
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引用方式:Li, Y.S., Lu, W.K., Huang, X.G., et al., 2026. Physics-informed neural network for reconstruction of seismic data under compressed sensing sampling. Pet. Sci. 23 (4), 1829–1841. https://doi.org/10.1016/j.petsci.2025.11.023.
文章摘要
Seismic exploration is one of the most critical methodologies and the highest-cost expenditures in the pre-exploration. The main cost of seismic exploration is acquiring seismic data, which can be significantly reduced through compressed sensing (CS) techniques. Traditional and deep learning (DL) CS methods offer unprecedented opportunities for cost optimization while maintaining data fidelity. However, CS methods rely on random acquisition, which performs poorly when the seismic data are not randomly acquired. This manuscript proposes a novel physics-informed neural network (PINN) framework for reconstructing 3D seismic data acquired via down-sampling from Ocean Bottom Seismometer (OBS) observation systems. The compressed sensing acquisition system of seismic data contains two types of sparsity: 1) 2D random missing traces, 2) Dual random missing of source lines and source points. The proposed method employed move-out (MO) transformations with multiple constant velocities to mitigate aliasing artifacts and improve reconstruction accuracy. Then, a pre-interpolation process is utilized for the MO-transformed seismic data groups. Additionally, a semblance evaluation mechanism dynamically assigns weights to each MO dataset, generating optimized, pre-interpolated seismic profiles. Finally, the PINN architecture integrates physical constraints to refine the reconstructed data. The experimental results demonstrate the superior reconstruction performance and computational efficiency of the proposed method compared with the state-of-the-art.
关键词
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Physics-informed neural network; Reconstruction of 3-D seismic data; Move-out transformation; Alias suppression