Temporal and spatial correlation patterns of air pollutants in Chinese cities.

As a huge threat to the public health, China's air pollution has attracted extensive attention and continues to grow in tandem with the economy. Although the real-time air quality report can be utilized to update our knowledge on air quality, questions about how pollutants evolve across time an...

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Main Authors: Yue-Hua Dai, Wei-Xing Zhou
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5568235?pdf=render
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spelling doaj-ca4f0d90be7a4847b34794d3d57d159b2020-11-25T00:27:02ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01128e018272410.1371/journal.pone.0182724Temporal and spatial correlation patterns of air pollutants in Chinese cities.Yue-Hua DaiWei-Xing ZhouAs a huge threat to the public health, China's air pollution has attracted extensive attention and continues to grow in tandem with the economy. Although the real-time air quality report can be utilized to update our knowledge on air quality, questions about how pollutants evolve across time and how pollutants are spatially correlated still remain a puzzle. In view of this point, we adopt the PMFG network method to analyze the six pollutants' hourly data in 350 Chinese cities in an attempt to find out how these pollutants are correlated temporally and spatially. In terms of time dimension, the results indicate that, except for O3, the pollutants have a common feature of the strong intraday patterns of which the daily variations are composed of two contraction periods and two expansion periods. Besides, all the time series of the six pollutants possess strong long-term correlations, and this temporal memory effect helps to explain why smoggy days are always followed by one after another. In terms of space dimension, the correlation structure shows that O3 is characterized by the highest spatial connections. The PMFGs reveal the relationship between this spatial correlation and provincial administrative divisions by filtering the hierarchical structure in the correlation matrix and refining the cliques as the tinny spatial clusters. Finally, we check the stability of the correlation structure and conclude that, except for PM10 and O3, the other pollutants have an overall stable correlation, and all pollutants have a slight trend to become more divergent in space. These results not only enhance our understanding of the air pollutants' evolutionary process, but also shed lights on the application of complex network methods into geographic issues.http://europepmc.org/articles/PMC5568235?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Yue-Hua Dai
Wei-Xing Zhou
spellingShingle Yue-Hua Dai
Wei-Xing Zhou
Temporal and spatial correlation patterns of air pollutants in Chinese cities.
PLoS ONE
author_facet Yue-Hua Dai
Wei-Xing Zhou
author_sort Yue-Hua Dai
title Temporal and spatial correlation patterns of air pollutants in Chinese cities.
title_short Temporal and spatial correlation patterns of air pollutants in Chinese cities.
title_full Temporal and spatial correlation patterns of air pollutants in Chinese cities.
title_fullStr Temporal and spatial correlation patterns of air pollutants in Chinese cities.
title_full_unstemmed Temporal and spatial correlation patterns of air pollutants in Chinese cities.
title_sort temporal and spatial correlation patterns of air pollutants in chinese cities.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description As a huge threat to the public health, China's air pollution has attracted extensive attention and continues to grow in tandem with the economy. Although the real-time air quality report can be utilized to update our knowledge on air quality, questions about how pollutants evolve across time and how pollutants are spatially correlated still remain a puzzle. In view of this point, we adopt the PMFG network method to analyze the six pollutants' hourly data in 350 Chinese cities in an attempt to find out how these pollutants are correlated temporally and spatially. In terms of time dimension, the results indicate that, except for O3, the pollutants have a common feature of the strong intraday patterns of which the daily variations are composed of two contraction periods and two expansion periods. Besides, all the time series of the six pollutants possess strong long-term correlations, and this temporal memory effect helps to explain why smoggy days are always followed by one after another. In terms of space dimension, the correlation structure shows that O3 is characterized by the highest spatial connections. The PMFGs reveal the relationship between this spatial correlation and provincial administrative divisions by filtering the hierarchical structure in the correlation matrix and refining the cliques as the tinny spatial clusters. Finally, we check the stability of the correlation structure and conclude that, except for PM10 and O3, the other pollutants have an overall stable correlation, and all pollutants have a slight trend to become more divergent in space. These results not only enhance our understanding of the air pollutants' evolutionary process, but also shed lights on the application of complex network methods into geographic issues.
url http://europepmc.org/articles/PMC5568235?pdf=render
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