Abstract

In the recent decade, the North China Plain (NCP) has been among the region’s most heavily polluted by PM2.5 in China. For the nonattainment cities in the NCP, joint pollution control with related cities is highly needed in addition to the emission controls in their own cities. However, as the basis of decision-making, the spatial characteristics of PM2.5 among these cities are still insufficiently revealed. In this work, the spatial characteristics among all nonattainment cities in the northern part of the North China Plain (NNCP) region were revealed based on data mining technologies including clustering, coefficient of divergence (COD), network correlation model, and terrain and meteorology analysis. The results indicate that PM2.5 pollution of cities with a distance of less than 180 km exhibits homogeneity in the NCP region. Especially, the sub-region, composed of Xinxiang, Hebi, Kaifeng, Zhengzhou, and Jiaozuo, was strongly homogeneous and a strong correlation exists among them. Compared with spring and summer, much stronger correlations of PM2.5 between cities were found in autumn and winter, indicating a strong need for joint prevention and control during these periods. All nonattainment cities in this region were divided into city-clusters, depending on the seasons and pollution levels to further helping to reduce their PM2.5 concentrations effectively. Air stagnation index (ASI) analysis indicates that the strong correlations between cities in autumn were more attributed to the transport impacts than those in winter, even though there were higher PM2.5 concentrations in winter. These results provided an insight into joint prevention and control of pollution in the NCP region.

Highlights

  • Agglomerative Hierarchical clustering (AHC) is a bottom-up statistical method that initially treats each object as a single cluster, merges it according to certain distance algo

  • According to hierarchical clustering based on the clustering of Euclidean distance and Pearson’s correlation distance, the northern part of the North China Plain (NNCP) region was divided into 6 sub-regions as shown in Figure 4a,b, respectively

  • This work focused on the spatial characteristics of PM2.5 pollution in the NNCP region, one of the key PM2.5 pollution regions in China

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Summary

Research

The domain domain alsocities includes theimportant “2 + 26” cities as the important pollutionintransport corridors includes the “2 + 26”. As the air pollution transportaircorridors the in the Beijing-Tianjin-Hebei region

31 December were obtained from
Agglomerative Hierarchical Clustering Model
Coefficient of Divergence
Complex Network Correlation Model
Air Stagnation Index
Basic Temporal-Spatial Distribution
Spatial Clustering Analysis
Spatial Heterogeneity Analysis
Network Correlation Analysis
Findings
Conclusions
Full Text
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