Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic

The COVID-19 pandemic is a major problem facing humanity throughout the world. The rapid and accurate tracking of population flows may therefore be epidemiologically informative. This paper adopts a massive amount of daily population flow data (from Jan 10 to Mar 15, 2020) for China obtained from th...

Full description

Bibliographic Details
Main Authors: Chengming Li, Zheng Wu, Lining Zhu, Li Liu, Chengcheng Zhang
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/10/3/145
id doaj-00cc2ac917674fa5b4331ffb40b2c0ad
record_format Article
spelling doaj-00cc2ac917674fa5b4331ffb40b2c0ad2021-03-09T00:01:53ZengMDPI AGISPRS International Journal of Geo-Information2220-99642021-03-011014514510.3390/ijgi10030145Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 EpidemicChengming Li0Zheng Wu1Lining Zhu2Li Liu3Chengcheng Zhang4Chinese Academy of Surveying and Mapping, Beijing 100830, ChinaChinese Academy of Surveying and Mapping, Beijing 100830, ChinaChinese Academy of Surveying and Mapping, Beijing 100830, ChinaChinese Academy of Surveying and Mapping, Beijing 100830, ChinaChinese Academy of Surveying and Mapping, Beijing 100830, ChinaThe COVID-19 pandemic is a major problem facing humanity throughout the world. The rapid and accurate tracking of population flows may therefore be epidemiologically informative. This paper adopts a massive amount of daily population flow data (from Jan 10 to Mar 15, 2020) for China obtained from the Baidu Migration platform to analyze the changes of the spatiotemporal patterns and network characteristics in population flow during the pre-outbreak period, outbreak period, and post-peak period. The results show that (1) for temporal characteristics of population flow, the total population flow varies greatly between the three periods, with an overall trend of the pre-outbreak period flow > the post-peak period flow > the outbreak period flow. Impacted by the lockdown measures, the population flow in various provinces plunged drastically and remained low until the post-peak period, at which time it gradually increased. (2) For the spatial pattern, the pattern of population flow is divided by the geographic demarcation line known as the Hu (Heihe-Tengchong) Line, with a high-density interconnected network in the southeast half and a low-density serial-connection network in the northwest half. During the outbreak period, Wuhan city appeared as a hollow region in the population flow network; during the post-peak period, the population flow increased gradually, but it was mainly focused on intra-provincial flow. (3) For the network characteristic changes, during the outbreak period, the gap in the network status between cities at different administrative levels narrowed significantly. Thus, the feasibility of Baidu migration data, comparison with non-epidemic periods, and optimal implications are discussed. This paper mainly described the difference and specific information under non-normal situation compared with existing results under a normal situation, and analyzed the impact mechanism, which can provide a reference for local governments to make policy recommendations for economic recovery in the future under the epidemic period.https://www.mdpi.com/2220-9964/10/3/145Baidu migrationCOVID-19 pandemicpopulation flowspatiotemporal patternnetwork characteristic changes
collection DOAJ
language English
format Article
sources DOAJ
author Chengming Li
Zheng Wu
Lining Zhu
Li Liu
Chengcheng Zhang
spellingShingle Chengming Li
Zheng Wu
Lining Zhu
Li Liu
Chengcheng Zhang
Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
ISPRS International Journal of Geo-Information
Baidu migration
COVID-19 pandemic
population flow
spatiotemporal pattern
network characteristic changes
author_facet Chengming Li
Zheng Wu
Lining Zhu
Li Liu
Chengcheng Zhang
author_sort Chengming Li
title Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
title_short Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
title_full Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
title_fullStr Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
title_full_unstemmed Changes of Spatiotemporal Pattern and Network Characteristic in Population Flow under COVID-19 Epidemic
title_sort changes of spatiotemporal pattern and network characteristic in population flow under covid-19 epidemic
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2021-03-01
description The COVID-19 pandemic is a major problem facing humanity throughout the world. The rapid and accurate tracking of population flows may therefore be epidemiologically informative. This paper adopts a massive amount of daily population flow data (from Jan 10 to Mar 15, 2020) for China obtained from the Baidu Migration platform to analyze the changes of the spatiotemporal patterns and network characteristics in population flow during the pre-outbreak period, outbreak period, and post-peak period. The results show that (1) for temporal characteristics of population flow, the total population flow varies greatly between the three periods, with an overall trend of the pre-outbreak period flow > the post-peak period flow > the outbreak period flow. Impacted by the lockdown measures, the population flow in various provinces plunged drastically and remained low until the post-peak period, at which time it gradually increased. (2) For the spatial pattern, the pattern of population flow is divided by the geographic demarcation line known as the Hu (Heihe-Tengchong) Line, with a high-density interconnected network in the southeast half and a low-density serial-connection network in the northwest half. During the outbreak period, Wuhan city appeared as a hollow region in the population flow network; during the post-peak period, the population flow increased gradually, but it was mainly focused on intra-provincial flow. (3) For the network characteristic changes, during the outbreak period, the gap in the network status between cities at different administrative levels narrowed significantly. Thus, the feasibility of Baidu migration data, comparison with non-epidemic periods, and optimal implications are discussed. This paper mainly described the difference and specific information under non-normal situation compared with existing results under a normal situation, and analyzed the impact mechanism, which can provide a reference for local governments to make policy recommendations for economic recovery in the future under the epidemic period.
topic Baidu migration
COVID-19 pandemic
population flow
spatiotemporal pattern
network characteristic changes
url https://www.mdpi.com/2220-9964/10/3/145
work_keys_str_mv AT chengmingli changesofspatiotemporalpatternandnetworkcharacteristicinpopulationflowundercovid19epidemic
AT zhengwu changesofspatiotemporalpatternandnetworkcharacteristicinpopulationflowundercovid19epidemic
AT liningzhu changesofspatiotemporalpatternandnetworkcharacteristicinpopulationflowundercovid19epidemic
AT liliu changesofspatiotemporalpatternandnetworkcharacteristicinpopulationflowundercovid19epidemic
AT chengchengzhang changesofspatiotemporalpatternandnetworkcharacteristicinpopulationflowundercovid19epidemic
_version_ 1724228402261524480