Continuous conditional generative adversarial networks for data-driven solutions of poroelasticity with heterogeneous material properties

  title={Continuous conditional generative adversarial networks for data-driven solutions of poroelasticity with heterogeneous material properties},
  author={Teeratorn Kadeethum and Daniel O’Malley and Y. Choi and Hari S. Viswanathan and Nikolaos Bouklas and Hongkyu Yoon},
  journal={Comput. Geosci.},

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