A comprehensive review of deep learning applications in hydrology and water resources

M Sit, BZ Demiray, Z Xiang, GJ Ewing… - Water Science and …, 2020 - iwaponline.com
The global volume of digital data is expected to reach 175 zettabytes by 2025. The volume,
variety and velocity of water-related data are increasing due to large-scale sensor networks …

Deep learning in pore scale imaging and modeling

Y Da Wang, MJ Blunt, RT Armstrong… - Earth-Science Reviews, 2021 - Elsevier
Pore-scale imaging and modeling has advanced greatly through the integration of Deep
Learning into the workflow, from image processing to simulating physical processes. In …

Pore-scale simulation of multiphase flow and reactive transport processes involved in geologic carbon sequestration

W Wang, Q Xie, S An, S Bakhshian, Q Kang… - Earth-Science …, 2023 - Elsevier
Multiphase flow and reactive transport are two essential physicochemical processes that
govern the effectiveness of geological carbon sequestration (GCS). The interaction and …

Predicting porosity, permeability, and tortuosity of porous media from images by deep learning

KM Graczyk, M Matyka - Scientific reports, 2020 - nature.com
Convolutional neural networks (CNN) are utilized to encode the relation between initial
configurations of obstacles and three fundamental quantities in porous media: porosity (φ) …

Unconventional hydrocarbon resources: geological statistics, petrophysical characterization, and field development strategies

T Muther, HA Qureshi, FI Syed, H Aziz, A Siyal… - Journal of Petroleum …, 2022 - Springer
Hydrocarbons exist in abundant quantity beneath the earth's surface. These hydrocarbons
are generally classified as conventional and unconventional hydrocarbons depending upon …

Development of the Senseiver for efficient field reconstruction from sparse observations

JE Santos, ZR Fox, A Mohan, D O'Malley… - Nature Machine …, 2023 - nature.com
The reconstruction of complex time-evolving fields from sensor observations is a grand
challenge. Frequently, sensors have extremely sparse coverage and low-resource …

[HTML][HTML] Deep CNNs as universal predictors of elasticity tensors in homogenization

B Eidel - Computer Methods in Applied Mechanics and …, 2023 - Elsevier
In the present work, 3D convolutional neural networks (CNNs) are trained to link random
heterogeneous, multiphase materials to their elastic macroscale stiffness thus replacing …

Computationally efficient multiscale neural networks applied to fluid flow in complex 3D porous media

JE Santos, Y Yin, H Jo, W Pan, Q Kang… - Transport in porous …, 2021 - Springer
The permeability of complex porous materials is of interest to many engineering disciplines.
This quantity can be obtained via direct flow simulation, which provides the most accurate …

[HTML][HTML] Predicting permeability from 3D rock images based on CNN with physical information

P Tang, D Zhang, H Li - Journal of Hydrology, 2022 - Elsevier
Permeability is one of the most important properties in subsurface flow problems, which
measures the ability of rocks to transmit fluid. Normally, permeability is determined through …

Materials processing model-driven discovery framework for porous materials using machine learning and genetic algorithm: A focus on optimization of permeability …

T Yasuda, S Ookawara, S Yoshikawa… - Chemical Engineering …, 2023 - Elsevier
This study proposes a material discovery framework for porous materials to identify design
variable recipes and the corresponding material structures that can be utilized to improve …