A Modified PINN Approach for Identifiable Compartmental Models in
Epidemiology with Applications to COVID-19
- URL: http://arxiv.org/abs/2208.01169v1
- Date: Mon, 1 Aug 2022 23:09:32 GMT
- Title: A Modified PINN Approach for Identifiable Compartmental Models in
Epidemiology with Applications to COVID-19
- Authors: Haoran Hu, Connor M Kennedy, Panayotis G. Kevrekidis, Hongkun Zhang
- Abstract summary: We present an approach toward analyzing accessible data on Covid-19's U.S. development using a variation of the "Physics Informed Neural Networks"
Aspects of identifiability of the model parameters are also assessed, as well as methods of denoising available data using a wavelet transform.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A variety of approaches using compartmental models have been used to study
the COVID-19 pandemic and the usage of machine learning methods with these
models has had particularly notable success. We present here an approach toward
analyzing accessible data on Covid-19's U.S. development using a variation of
the "Physics Informed Neural Networks" (PINN) which is capable of using the
knowledge of the model to aid learning. We illustrate the challenges of using
the standard PINN approach, then how with appropriate and novel modifications
to the loss function the network can perform well even in our case of
incomplete information. Aspects of identifiability of the model parameters are
also assessed, as well as methods of denoising available data using a wavelet
transform. Finally, we discuss the capability of the neural network methodology
to work with models of varying parameter values, as well as a concrete
application in estimating how effectively cases are being tested for in a
population, providing a ranking of U.S. states by means of their respective
testing.
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