SPATIO-TEMPORAL CHARACTERISTICS OF NO2 IN PRD URBAN GROUP AND THE ANTHROPOGENIC INFLUENCES ANALYSIS BASED ON OMI REMOTE SENSING DATA

被引:0
|
作者
刘显通 [1 ]
郑腾飞 [1 ]
万齐林 [1 ]
谭浩波 [2 ]
邓雪娇 [1 ]
李菲 [1 ]
邓涛 [1 ]
机构
[1] Guangzhou Institute of Tropical and Marine Meteorology/Guangdong Provincial Key Laboratory of Regional Numerical Weather Prediction,CMA
[2] Ecological Meteorological Center of Guangdong Province
关键词
Pearl River Delta urban group; NO2; spatial and temporal distribution; anthropogenic influences;
D O I
10.16555/j.1006-8775.2016.04.011
中图分类号
X51 [大气污染及其防治]; X87 [环境遥感];
学科分类号
0706 ; 070602 ; 1404 ;
摘要
Spatio-temporal distribution characteristics and variation trends of tropospheric NO2in Pearl River Delta(PRD) urban group and its adjacent areas were analyze from 2005 to 2013 based on remote sensing data from ozone monitoring instrument(OMI) satellite, and further explored the impact of human activities on NO2. Compared with the ground observation data, the OMI NO2remote sensing data displayed high reliability. Due to active industrial production, high car ownership, great energy and power consumption, the average tropospheric NO2concentration(7.4×1015molec/cm2) of PRD region is about 3 times of the adjacent areas. At the same time, the regional high pollution NO2in PRD region as a whole, the urban group effect is remarkable. Sinusoidal model can well fit the periodic variation of the NO2in PRD and adjacent areas. NO2concentration was highest in winter while lowest in summer. The concentration of NO2in PRD region is decreasing in recent 9 years, which has a significantly negative correlation with the second industry output and car ownership. This suggests that the nitrogen oxide emissions governance in PRD region had achieved initial results. The concentration of NO2increased significantly in the eastern and northern Guangdong Province, there are good positive correlations with the second industrial outputs and car ownerships, it is thus clear that industrial emissions and automobile exhausts are important sources of NO2in these regions. The concentration of NO2in western Guangdong area is stable.
引用
收藏
页码:568 / 577
页数:10
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