Example code for implementing physics-informed neural networks and generating simulated data
June 4, 2024
There are 2 Jupyter notebooks that are example code for implementing a physics informed neutral network, and the code is companion to the manuscript entitled: "Spatio-temporal ecological models via physics-informed neural net-
works for studying chronic wasting disease" by Reyes et al. (2024). The first notebook simulates data, and the second notebook uses this simulated data when implementing an example phyiscs informed neural network.
Citation Information
Publication Year | 2024 |
---|---|
Title | Example code for implementing physics-informed neural networks and generating simulated data |
DOI | 10.5066/P13VMCUO |
Authors | Daniel P Walsh, Juan Francisco Mandujano Reyes, Jun Zhu |
Product Type | Software Release |
Record Source | USGS Asset Identifier Service (AIS) |
USGS Organization | Cooperative Research Units Program |
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