2024
DOI: 10.3389/feart.2024.1510138
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Porosity identification using residual PPTransformer network

Ke Huang,
Shitao Cui,
Hongge Kan
et al.

Abstract: Precisely estimating the carbonate’s porosity is essential for subsurface reservoir characterization. However, conventional methods for obtaining porosity using either core measurements or logging interpretation are expensive and inefficient. Considering the sequence data feature of logging curves and the booming development of intelligent networks in geoscience, this study proposes a reliable and low-cost intelligent Porosity Prediction Transformer (PPTransformer) framework for reservoir porosity prediction u… Show more

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