4.7 Article

Spatial Analysis of Urban Residential Sensitivity to Heatwave Events: Case Studies in Five Megacities in China

Journal

REMOTE SENSING
Volume 13, Issue 20, Pages -

Publisher

MDPI
DOI: 10.3390/rs13204086

Keywords

heatwave events; residential sensitivity to HWEs; social media Big Data; spatial match of sensitivity and HWEs; China

Funding

  1. National Key Research and Development Program of China [2017YFB0503605]
  2. National Natural Science Foundation of China [41671165]
  3. Funding Project for Academic Human Resources Development in Institutions of Higher Learning Under the Jurisdiction of Beijing Municipality [CITTCD201904070]
  4. Beijing Union University [ZK40202001, RB202101, YZ2020K001]

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This study proposes a new paradigm for urban residential sensitivity to heatwave risks based on social media Big Data, and conducts empirical research in five megacities in China. By utilizing natural language processing and spatial analysis technology, the research identifies urban residential sensitivity to heatwave risks. The results show that urban center residential areas have lower sensitivity to heatwave events, while rural areas exhibit higher sensitivity.
Urban heatwaves increase residential health risks. Identifying urban residential sensitivity to heatwave risks is an important prerequisite for mitigating the risks through urban planning practices. This research proposes a new paradigm for urban residential sensitivity to heatwave risks based on social media Big Data, and describes empirical research in five megacities in China, namely, Beijing, Nanjing, Wuhan, Xi'an and Guangzhou, which explores the application of this paradigm to real-world environments. Specifically, a method to identify urban residential sensitive to heatwave risks was developed by using natural language processing (NLP) technology. Then, based on remote sensing images and Weibo data, from the perspective of the relationship between people (group perception) and the ground (meteorological temperature), the relationship between high temperature and crowd sensitivity in geographic space was studied. Spatial patterns of the residential sensitivity to heatwaves over the study area were characterized at fine scales, using the information extracted from remote sensing information, spatial analysis, and time series analysis. The results showed that the observed residential sensitivity to urban heatwave events (HWEs), extracted from Weibo data (Chinese Twitter), best matched the temporal trends of HWEs in geographic space. At the same time, the spatial distribution of observed residential sensitivity to HWEs in the cities had similar characteristics, with low sensitivity in the urban center but higher sensitivity in the countryside. This research illustrates the benefits of applying multi-source Big Data and intelligent analysis technologies to the understand of impacts of heatwave events on residential life, and provide decision-making data for urban planning and management.

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