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"Novel physics informed-neural networks for estimation of hydraulic ..."
Mahmoud Elkhadrawi et al. (2024)
- Mahmoud Elkhadrawi
, Carla Ng, Daniel J. Bain, Emelia E. Sargent, Emma V. Stearsman, Kimberly A. Gray, Murat Akçakaya:
Novel physics informed-neural networks for estimation of hydraulic conductivity of green infrastructure as a performance metric by solving Richards-Richardson PDE. Neural Comput. Appl. 36(10): 5555-5569 (2024)
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