2024
DOI: 10.1190/geo2023-0614.1
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Enhancing seismic porosity estimation through 3D sequence-to-sequence deep learning with data augmentation, spatial constraints, and geologic constraints

Minghui Xu,
Luanxiao Zhao,
Jingyu Liu
et al.

Abstract: Estimating porosity from seismic data is critical for studying underground rock properties, assessing energy reserves, and subsequent reservoir exploration and development. For reservoirs with strong heterogeneity, the endeavor to accurately and stably characterize spatial variations in porosity often encounters considerable challenges due to the rapid lateral changes of formations. In view of this, establishing a robust mapping relationship from seismic data to reservoir properties in three-dimensional (3D) s… Show more

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