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Associations Between Community Green View Index and Fine Particulate Matter from Airboxes

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Date 2024 Feb 24
PMID 38401737
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Abstract

Urban greenery can help to improve air quality, reduce health risks and create healthy livable urban communities. This study aimed to explore the role of urban greenery in reducing air pollution at the community level in Tainan City, Taiwan, using air quality sensors and street-view imagery. We also collected the number of road trees around each air quality sensor site and identified the species that were best at absorbing PM. Three greenness metrics were used to assess community greenery in this study: two Normalized Difference Vegetation Indices (NDVI) from different satellites and the Green View Index (GVI) from Google Street View (GSV) images. Land-use Regression (LUR) was used for statistical analysis. The results showed that a higher GVI within a 500 m buffer was significantly associated with decreased PM. Neither NDVI metrics within a 500 m circular buffer were significantly associated with decreased PM. Evergreen trees were significantly associated with lower ambient PM, compared with deciduous and semi-deciduous trees. Because localized changes in air quality profoundly affect public health and environmental equity, our findings provide evidence for future urban community greenspace planning and its beneficial impacts on reducing air pollution.

Citing Articles

Unraveling nonlinear effects of environment features on green view index using multiple data sources and explainable machine learning.

Chen C, Wang J, Li D, Sun X, Zhang J, Yang C Sci Rep. 2024; 14(1):30189.

PMID: 39632996 PMC: 11618478. DOI: 10.1038/s41598-024-81451-6.