Published October 12, 2021
| Version V.1.0.0
Software
Open
Identifiability and predictability of integer- and fractional-order epidemiological models using physics-informed neural networks
- 1. Brown University
- 2. Shanghai University
- 3. Jinan University
- 4. Purdue University
Description
This is the first release of the PINN-COVID code for our paper "Identifiability and predictability of integer- and fractional-order epidemiological models using physics-informed neural networks".
Notes
Files
ehsankharazmi/PINN-COVID-V.1.0.0.zip
Files
(4.1 MB)
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md5:e05fbe543e05174dfb136f9dab115aec
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Additional details
Related works
- Is supplement to
- https://github.com/ehsankharazmi/PINN-COVID/tree/V.1.0.0 (URL)