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Ahmed H. Elsheikh

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Generating Infinite-Resolution Texture using GANs with Patch-by-Patch Paradigm

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Sep 05, 2023
Alhasan Abdellatif, Ahmed H. Elsheikh

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Gym-preCICE: Reinforcement Learning Environments for Active Flow Control

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May 03, 2023
Mosayeb Shams, Ahmed H. Elsheikh

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Probabilistic forecasting for geosteering in fluvial successions using a generative adversarial network

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Jul 04, 2022
Sergey Alyaev, Jan Tveranger, Kristian Fossum, Ahmed H. Elsheikh

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Generation of non-stationary stochastic fields using Generative Adversarial Networks with limited training data

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May 11, 2022
Alhasan Abdellatif, Ahmed H. Elsheikh, Daniel Busby, Philippe Berthet

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Generating unrepresented proportions of geological facies using Generative Adversarial Networks

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Mar 17, 2022
Alhasan Abdellatif, Ahmed H. Elsheikh, Gavin Graham, Daniel Busby, Philippe Berthet

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Optimal Bayesian experimental design for subsurface flow problems

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Aug 10, 2020
Alexander Tarakanov, Ahmed H. Elsheikh

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Parametrization of stochastic inputs using generative adversarial networks with application in geology

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Apr 09, 2019
Shing Chan, Ahmed H. Elsheikh

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Exemplar-based synthesis of geology using kernel discrepancies and generative neural networks

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Sep 21, 2018
Shing Chan, Ahmed H. Elsheikh

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Parametric generation of conditional geological realizations using generative neural networks

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Jul 13, 2018
Shing Chan, Ahmed H. Elsheikh

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A machine learning approach for efficient uncertainty quantification using multiscale methods

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Nov 12, 2017
Shing Chan, Ahmed H. Elsheikh

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