Petroleum Exploration and Development (Feb 2023)

A 3D attention U-Net network and its application in geological model parameterization

  • Xiaobo LI,
  • Xin LI,
  • Lin YAN,
  • Tenghua ZHOU,
  • Shunming LI,
  • Jiqiang WANG,
  • Xinhao LI

Journal volume & issue
Vol. 50, no. 1
pp. 183 – 190

Abstract

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To solve the problems of convolutional neural network–principal component analysis (CNN-PCA) in fine description and generalization of complex reservoir geological features, a 3D attention U-Net network was proposed not using a trained C3D video motion analysis model to extract the style of a 3D model, and applied to complement the details of geologic model lost in the dimension reduction of PCA method in this study. The 3D attention U-Net network was applied to a complex river channel sandstone reservoir to test its effects. The results show that compared with CNN-PCA method, the 3D attention U-Net network could better complement the details of geological model lost in the PCA dimension reduction, better reflect the fluid flow features in the original geologic model, and improve history matching results.

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