Follow
Nam Pham
Nam Pham
Graduate Research Assistant, Bureau of Economic Geology, University of Texas at Austin
Verified email at utexas.edu
Title
Cited by
Cited by
Year
Building realistic structure models to train convolutional neural networks for seismic structural interpretation
X Wu, Z Geng, Y Shi, N Pham, S Fomel, G Caumon
Geophysics 85 (4), WA27-WA39, 2020
1982020
Automatic channel detection using deep learning
N Pham, S Fomel, D Dunlap
Interpretation 7 (3), SE43-SE50, 2019
1462019
Missing well log prediction using convolutional long short-term memory network
N Pham, X Wu, E Zabihi Naeini
Geophysics 85 (4), WA159-WA171, 2020
862020
Seismic data interpolation using CycleGAN
H Kaur, N Pham, S Fomel
SEG technical program expanded abstracts 2019, 2202-2206, 2019
842019
Seismic data interpolation using deep learning with generative adversarial networks
H Kaur, N Pham, S Fomel
Geophysical Prospecting 69 (2), 307-326, 2021
832021
Improving resolution of migrated images by approximating the inverse Hessian using deep learning
H Kaur, N Pham, S Fomel
Geophysics 85 (4), WA173–WA183, 2020
692020
Seismic ground‐roll noise attenuation using deep learning
H Kaur, S Fomel, N Pham
Geophysical Prospecting 68 (7), 2064-2077, 2020
672020
Scalodeep: A highly generalized deep learning framework for real‐time earthquake detection
OM Saad, G Huang, Y Chen, A Savvaidis, S Fomel, N Pham, Y Chen
Journal of Geophysical Research: Solid Earth 126 (4), e2020JB021473, 2021
622021
Physics-constrained deep learning for ground roll attenuation
N Pham, W Li
Geophysics 87 (1), V15-V27, 2022
332022
Overcoming numerical dispersion of finite-difference wave extrapolation using deep learning
H Kaur, S Fomel, N Pham
SEG International Exposition and Annual Meeting, D033S076R002, 2019
312019
High-fidelity permeability and porosity prediction using deep learning with the self-attention mechanism
L Yang, S Wang, X Chen, W Chen, OM Saad, X Zhou, N Pham, Z Geng, ...
IEEE Transactions on Neural Networks and Learning Systems 34 (7), 3429-3443, 2022
252022
Elastic wave-mode separation in heterogeneous anisotropic media using deep learning
H Kaur, S Fomel, N Pham
Seg technical program expanded abstracts 2019, 2654-2658, 2019
212019
A fast algorithm for elastic wave‐mode separation using deep learning with generative adversarial networks (GANS)
H Kaur, S Fomel, N Pham
Journal of Geophysical Research: Solid Earth 126 (9), e2020JB021123, 2021
192021
Missing well log prediction using deep recurrent neural networks
N Pham, EZ Naeini
81st EAGE Conference and Exhibition 2019 2019 (1), 1-5, 2019
182019
Seismic data interpolation using CycleGAN: 89th Annual International Meeting, SEG, Expanded Abstracts, 2202–2206, doi: 10.1190/segam2019-3207424.1
H Kaur, N Pham, S Fomel
Abstract, 2019
182019
A deep learning framework for seismic facies classification
H Kaur, N Pham, S Fomel, Z Geng, L Decker, B Gremillion, M Jervis, ...
Interpretation 11 (1), T107-T116, 2023
172023
Uncertainty and interpretability analysis of encoder-decoder architecture for channel detection
N Pham, S Fomel
Geophysics 86 (4), O49-O58, 2021
152021
Uncertainty estimation using Bayesian convolutional neural network for automatic channel detection
N Pham, S Fomel
SEG International Exposition and Annual Meeting, D031S068R001, 2020
152020
Ground roll attenuation using generative adversarial network
H Kaur, S Fomel, N Pham
81st EAGE Conference and Exhibition 2019 2019 (1), 1-5, 2019
152019
Separating primaries and multiples using hyperbolic Radon transform with deep learning
H Kaur, N Pham, S Fomel
SEG Technical Program Expanded Abstracts 2020, 1496-1500, 2020
132020
The system can't perform the operation now. Try again later.
Articles 1–20