Using A Partial Differential Equation with Google Mobility Data to Predict COVID-19 in Arizona
Haiyan Wang, Nao Yamamoto

TL;DR
This paper introduces a PDE-based model utilizing Google Mobility data to predict COVID-19 cases in Arizona, achieving over 94% accuracy and highlighting the impact of personal precautions on virus spread.
Contribution
The study presents the first PDE model incorporating Google Mobility Reports for COVID-19 prediction at the county level in Arizona.
Findings
Prediction accuracy exceeds 94%
Human activity significantly influences COVID-19 transmission
Personal precautions effectively reduce case numbers
Abstract
The outbreak of COVID-19 disrupts the life of many people in the world. The state of Arizona in the U.S. emerges as one of the country's newest COVID-19 hot spots. Accurate forecasting for COVID-19 cases will help governments to implement necessary measures and convince more people to take personal precautions to combat the virus. It is difficult to accurately predict the COVID-19 cases due to many human factors involved. This paper aims to provide a forecasting model for COVID-19 cases with the help of human activity data from the Google Community Mobility Reports. To achieve this goal, a specific partial differential equation (PDE) is developed and validated with the COVID-19 data from the New York Times at the county level in the state of Arizona in the U.S. The proposed model describes the combined effects of transboundary spread among county clusters in Arizona and human actives on…
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