Petroleum Science >2026,??Issue5:??2501-2526 DOI: https://doi.org/10.1016/j.petsci.2026.01.005
Semi-supervised learning for AVO inversion with bidirectional spatial feature constraints Open?Access
文章信息
作者:Ying-Tian Liu, Yong Li, Jun-Heng Peng, Jian-Yong Xie, Xian-Qiong Chen
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引用方式:Liu, Y.T., Li, Y., Peng, J.H., et al., 2026. Semi-supervised learning for AVO inversion with bidirectional spatial feature constraints. Petrol. Sci. 23 (5), 2501–2526. https://doi.org/10.1016/j.petsci.2026.01.005.
文章摘要
Prestack amplitude variation with offset (AVO) inversion using one-dimensional convolutional neural networks often lacks lateral continuity. While two-dimensional methods improve this, they are limited to unidirectional spatial correlations from well to non-well locations. To overcome these limitations, we propose a semi-supervised learning approach with bidirectional spatial feature constraints (BSFC-SSL). Our method introduces a label-annihilation operator and a dedicated spatial feature network to establish bidirectional information flow between well and non-well locations, thereby capturing more complex spatial patterns in seismic data. Integrated with semi-supervised learning and low-frequency constraints, the BSFC-SSL framework enhances both stability and generalization. Experiments on synthetic and field data demonstrate that our method achieves superior lateral continuity and inversion accuracy compared to conventional one- and two-dimensional deep learning techniques.
关键词
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AVO inversion; Deep learning; Spatial feature constraints; Semi-supervised learning