Mobility Dynamics amid COVID-19 with a Case Study in Tennessee

Transp Res Rec. 2023 Apr;2677(4):946-959. doi: 10.1177/03611981211063199. Epub 2021 Dec 27.

Abstract

The year 2020 has marked the spread of a global pandemic, COVID-19, challenging many aspects of our daily lives. Different organizations have been involved in controlling this outbreak. The social distancing intervention is deemed to be the most effective policy in reducing face-to-face contact and slowing down the rate of infections. Stay-at-home and shelter-in-place orders have been implemented in different states and cities, affecting daily traffic patterns. Social distancing interventions and fear of the disease resulted in a traffic decline in cities and counties. However, after stay-at-home orders ended and some public places reopened, traffic gradually started to revert to pre-pandemic levels. It can be shown that counties have diverse patterns in the decline and recovery phases. This study analyzes county-level mobility change after the pandemic, explores the contributing factors, and identifies possible spatial heterogeneity. To this end, 95 counties in Tennessee have been selected as the study area to perform geographically weighted regressions (GWR) models. The results show that density on non-freeway roads, median household income, percent of unemployment, population density, percent of people over age 65, percent of people under age 18, percent of work from home, and mean time to work are significantly correlated with vehicle miles traveled change magnitude in both decline and recovery phases. Also, the GWR estimation captures the spatial heterogeneity and local variation in coefficients among counties. Finally, the results imply that the recovery phase could be estimated depending on the identified spatial attributes. The proposed model can help agencies and researchers estimate and manage decline and recovery based on spatial factors in similar events in the future.

Keywords: GIS and data; big data/crowdsourced data/data needs; community resources and impacts; data and data science; geospatial data; geospatial data visualization; health and transportation metrics; infrastructure; infrastructure management and system preservation; national and state transportation data and information systems; operations; pavement management systems; shared mobility operations; sustainability and resilience; traffic flow theory and characteristics; transportation and public health; transportation and society; visualization in transportation.