Executive orders or public fear: What caused transit ridership to drop in Chicago during COVID-19?

Transp Res D Transp Environ. 2022 Apr:105:103226. doi: 10.1016/j.trd.2022.103226. Epub 2022 Mar 10.

Abstract

The COVID-19 pandemic has induced significant transit ridership losses worldwide. This paper conducts a quantitative analysis to reveal contributing factors to such losses, using data from the Chicago Transit Authority's bus and rail systems before and after the COVID-19 outbreak. It builds a sequential statistical modeling framework that integrates a Bayesian structural time-series model, a dynamics model, and a series of linear regression models, to fit the ridership loss with pandemic evolution and regulatory events, and to quantify how the impacts of those factors depend on socio-demographic characteristics. Results reveal that, for both bus and rail, remote learning/working answers for the majority of ridership loss, and their impacts depend highly on socio-demographic characteristics. Findings from this study cast insights into future evolution of transit ridership as well as recovery campaigns in the post-pandemic era.

Keywords: Bayesian structural time series; COVID-19; Dynamics model; Mobility; Regression analysis; Remote work; Ridership recovery; Telecommute; Transit ridership.