Exploring the dynamic impacts of COVID-19 on intercity travel in China

Many studies have explored the effects of transportation and population movement on the spread of pandemics. However, little attention has been paid to the dynamic impact of pandemics on intercity travel and its recovery during a public health event period. Using intercity mobility and COVID-19 pand...

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Veröffentlicht in:Journal of transport geography 2021-07, Vol.95, p.103153-103153, Article 103153
Hauptverfasser: Li, Tao, Wang, Jiaoe, Huang, Jie, Yang, Wenyue, Chen, Zhuo
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container_title Journal of transport geography
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creator Li, Tao
Wang, Jiaoe
Huang, Jie
Yang, Wenyue
Chen, Zhuo
description Many studies have explored the effects of transportation and population movement on the spread of pandemics. However, little attention has been paid to the dynamic impact of pandemics on intercity travel and its recovery during a public health event period. Using intercity mobility and COVID-19 pandemic data, this study adopts the gradient boosting decision tree method to explore the dynamic effects of the COVID-19 on intercity travel in China. The influencing factors were classified into daily time-varying factors and time-invariant factors. The results show that China's intercity travel decreased on average by 51.35% from Jan 26 to Apr 7, 2020. Furtherly, the COVID-19 pandemic reduces intercity travel directly and indirectly by influencing industry development and transport connectivity. With the spread of COVID-19 and changes of control measures, the relationship between intercity travel and COVID-19, socio-economic development, transport is not linear. The relationship between intercity travel and secondary industry is illustrated by an inverted U-shaped curve from pre-pandemic to post-pandemic, whereas that with tertiary industry can be explained by a U-shaped curve. Meanwhile, this study highlights the dynamic effect of the COVID-19 on intercity mobility. These implications shed light on policies regarding the control measures during public health events that should include the dynamic impact of pandemics on intercity travel.
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The relationship between intercity travel and secondary industry is illustrated by an inverted U-shaped curve from pre-pandemic to post-pandemic, whereas that with tertiary industry can be explained by a U-shaped curve. Meanwhile, this study highlights the dynamic effect of the COVID-19 on intercity mobility. 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source Elsevier ScienceDirect Journals
subjects Coronaviruses
COVID-19
Decision trees
Economic development
GBDT model
Industrial development
Intercity mobility
Intercity travel
Interurban travel
Mobility
Pandemics
Public health
Time-varying
Travel
title Exploring the dynamic impacts of COVID-19 on intercity travel in China
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