Shear-Wave Velocity Prediction Method via a Gate Recurrent Unit Fusion Network Based on the Spatiotemporal Attention Mechanism
AbstractCompression-wave velocity and shear-wave velocity are important elastic parameters describing deeply tight sandstone. Limited by cost and technical reasons, the conventional logging data generally lack shear-wave velocity. In addition, the existing rock physics theory is diff...
Main Authors: | Tengfei Chen, Gang Gao, Yonggen Li, Peng Wang, Bin Zhao, Zhixian Gui, Xiaoyan Zhai |
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Format: | Article |
Language: | English |
Published: |
GeoScienceWorld
2022-12-01
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Series: | Lithosphere |
Online Access: | https://pubs.geoscienceworld.org/lithosphere/article/2022/Special%2012/4701851/619658/Shear-Wave-Velocity-Prediction-Method-via-a-Gate |
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