2024
DOI: 10.1063/5.0232487
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A depth graph attention-based multi-channel transfer learning network for fluid classification from logging data

Hengxiao Li,
Sibo Qiao,
Youzhuang Sun

Abstract: Fluid classification is a fundamental task in the field of geological sciences to achieve effective reservoir characterization and hydrocarbon exploration. Traditional fluid classification methods are often limited by long processing times and an inability to capture complex relationships within the data. To address this issue, this paper proposes a novel deep learning approach—the Deep Graph Attention Multi-channel Transfer Learning Network (DGMT), aimed at improving the efficiency and accuracy of fluid class… Show more

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