A systematic review of data science and machine learning applications to the oil and gas industry

Z Tariq, MS Aljawad, A Hasan, M Murtaza… - Journal of Petroleum …, 2021 - Springer
This study offered a detailed review of data sciences and machine learning (ML) roles in
different petroleum engineering and geosciences segments such as petroleum exploration …

70 years of machine learning in geoscience in review

JS Dramsch - Advances in geophysics, 2020 - Elsevier
This review gives an overview of the development of machine learning in geoscience. A
thorough analysis of the codevelopments of machine learning applications throughout the …

Prestack and poststack inversion using a physics-guided convolutional neural network

R Biswas, MK Sen, V Das, T Mukerji - Interpretation, 2019 - library.seg.org
An inversion algorithm is commonly used to estimate the elastic properties, such as P-wave
velocity (VP), S-wave velocity (VS), and density (ρ) of the earth's subsurface. Generally, the …

SaltSeg: Automatic 3D salt segmentation using a deep convolutional neural network

Y Shi, X Wu, S Fomel - Interpretation, 2019 - library.seg.org
Salt boundary interpretation is important for the understanding of salt tectonics and velocity
model building for seismic migration. Conventional methods consist of computing salt …

Seismic facies classification using supervised convolutional neural networks and semisupervised generative adversarial networks

M Liu, M Jervis, W Li, P Nivlet - Geophysics, 2020 - library.seg.org
Mapping of seismic and lithologic facies from 3D reflection seismic data plays a key role in
depositional environment analysis and reservoir characterization during hydrocarbon …

Successful leveraging of image processing and machine learning in seismic structural interpretation: A review

Z Wang, H Di, MA Shafiq, Y Alaudah, G AlRegib - The Leading Edge, 2018 - library.seg.org
As a process that identifies geologic structures of interest such as faults, salt domes, or
elements of petroleum systems in general, seismic structural interpretation depends heavily …

[HTML][HTML] A comparison of deep learning methods for seismic impedance inversion

SB Zhang, HJ Si, XM Wu, SS Yan - Petroleum Science, 2022 - Elsevier
Deep learning is widely used for seismic impedance inversion, but few work provides in-
depth research and analysis on designing the architectures of deep neural networks and …

Seismic stratigraphy interpretation by deep convolutional neural networks: A semisupervised workflow

H Di, Z Li, H Maniar, A Abubakar - Geophysics, 2020 - library.seg.org
Depicting geologic sequences from 3D seismic surveying is of significant value to
subsurface reservoir exploration, but it is usually time-and labor-intensive for manual …

Deep learning for characterizing paleokarst collapse features in 3‐D seismic images

X Wu, S Yan, J Qi, H Zeng - Journal of Geophysical Research …, 2020 - Wiley Online Library
Paleokarst systems are found extensively in carbonate‐prone basins worldwide. They can
form large reservoirs and provide efficient pathways for hydrocarbon migration, but they can …

ChannelSeg3D: Channel simulation and deep learning for channel interpretation in 3D seismic images

H Gao, X Wu, G Liu - Geophysics, 2021 - library.seg.org
Seismic channel interpretation involves detecting channel structures, which often appear as
meandering shapes in 3D seismic images. Many conventional methods are proposed for …