Impacts of COVID-19 on urban rail transit ridership using the Synthetic Control Method.

Transp Policy (Oxf)

Harbin Institute of Technology, School of Transportation Science & Engineering, 73 Huanghe Road, Harbin, Heilongjiang, 150090, China.

Published: September 2021

AI Article Synopsis

  • The COVID-19 pandemic significantly impacted urban rail transit (URT) ridership, leading to unprecedented declines worldwide, particularly in Chinese cities which saw up to a 90% reduction.
  • The study uses the Synthetic Control Method to analyze ridership changes in 22 cities across Asia, Europe, and the US, focusing on 11 cities in Asia to measure the differences between actual and potential ridership during the pandemic.
  • Findings indicate that the severity and length of COVID-19 lockdowns affect ridership recovery, with Wuhan experiencing a 22% slower recovery due to full system closure, offering insights for policymakers on managing URT during future emergencies.

Article Abstract

The outbreak of COVID-19 in 2020 has had drastic impacts on urban economies and activities, with transit systems around the world witnessing an unprecedented decline in ridership. This paper attempts to estimate the effect of COVID-19 on the daily ridership of urban rail transit (URT) using the Synthetic Control Method (SCM). Six variables are selected as the predictors, among which four variables unaffected by the pandemic are employed. A total of 22 cities from Asia, Europe, and the US with varying timelines of the pandemic outbreak are selected in this study. The effect of COVID-19 on the URT ridership in 11 cities in Asia is investigated using the difference between their observed ridership reduction and the potential ridership generated by the other 11 cities. Additionally, the effect of the system closure in Wuhan on ridership recovery is analyzed. A series of placebo tests are rolled out to confirm the significance of these analyses. Two traditional methods (causal impact analysis and straightforward analysis) are employed to illustrate the usefulness of the SCM. Most Chinese cities experienced about a 90% reduction in ridership with some variation among different cities. Seoul and Singapore experienced a minor decrease compared to Chinese cities. The results suggest that URT ridership reductions are associated with the severity and duration of restrictions and lockdowns. Full system closure can have severe impacts on the speed of ridership recovery following resumption of service, as demonstrated in the case of Wuhan with about 22% slower recovery. The results of this study can provide support for policymakers to monitor the URT ridership during the recovery period and understand the likely effects of system closure if considered in future emergency events.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9759735PMC
http://dx.doi.org/10.1016/j.tranpol.2021.07.006DOI Listing

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Impacts of COVID-19 on urban rail transit ridership using the Synthetic Control Method.

Transp Policy (Oxf)

September 2021

Harbin Institute of Technology, School of Transportation Science & Engineering, 73 Huanghe Road, Harbin, Heilongjiang, 150090, China.

Article Synopsis
  • The COVID-19 pandemic significantly impacted urban rail transit (URT) ridership, leading to unprecedented declines worldwide, particularly in Chinese cities which saw up to a 90% reduction.
  • The study uses the Synthetic Control Method to analyze ridership changes in 22 cities across Asia, Europe, and the US, focusing on 11 cities in Asia to measure the differences between actual and potential ridership during the pandemic.
  • Findings indicate that the severity and length of COVID-19 lockdowns affect ridership recovery, with Wuhan experiencing a 22% slower recovery due to full system closure, offering insights for policymakers on managing URT during future emergencies.
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