Xu et al., 2021 - Google Patents
Weak form theory-guided neural network (TgNN-wf) for deep learning of subsurface single-and two-phase flowXu et al., 2021
View PDF- Document ID
- 14451660854021013629
- Author
- Xu R
- Zhang D
- Rong M
- Wang N
- Publication year
- Publication venue
- Journal of Computational Physics
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Snippet
Deep neural networks (DNNs) are widely used as surrogate models, and incorporating theoretical guidance into DNNs has improved generalizability. However, most such approaches define the loss function based on the strong form of conservation laws (via …
- 230000001537 neural 0 title abstract description 46
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