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Estimation of background concentration of PM in Beijing using a statistical integrated approach
Gao, S (Gao, Shuang)1; Cong, ZY (Cong, Zhiyuan)2; Yu, H (Yu, Hao)3; Sun, YL (Sun, Yanling)1; Mao, J (Mao, Jian)1; Zhan, H (Zhan, Hui)1; Ma, ZX (Ma, Zhenxing)1; Azzi, M (Azzi, Merched)4; Yang, W (Yang, Wen)3; Jiang, Y (Jiang, Yan)5; Chen, L (Chen, Li)1; Bai, ZP (Bai, Zhipeng)1,3
Source PublicationATMOSPHERIC POLLUTION RESEARCH
2019
Volume10Issue:3Pages:858-867
DOI10.1016/j.apr.2018.12.014
Abstract

The high concentrations of particulate matter (PM10, and PM2.5) air pollutants in China are of great concern to public health. To develop efficient and effective environment control policies, an understanding of PM background concentrations is therefore essential. In this study, we estimated background concentrations of PM10, and PM2.5 in Beijing from January to December 2016, using an integrated approach that involved meteorological filtering, backward trajectory modelling, spectral analysis and a Kolmogorov-Zurbenko (KZ) filter. The estimated annual average background concentration of PM10, was 47 mu g/m(3) (ranging from 37 to 71 mu g/m(3)), while PM2.5 averaged 25 mu g/m(3) (ranging from 18 to 37 mu g/m(3)). The contribution of background pollution to the ambient concentration of PM was 37-68% for PM10, and 21-54% for PM2.5, which is comparable to other studies. The estimated background concentrations from this study were assessed using the Community Multi-scale Air Quality results published by Beijing Municipal Environmental Protection Bureau. Our method has great potential for estimating PM pollutants and could also be applied to other pollutants.

Subject AreaEnvironmental Sciences
WOS IDWOS:000466482900021
Language英语
Indexed BySCI
KeywordKolmogorov-zurbenko Filter Air-pollution Exposure Particulate Matter Time-series Spectral-analysis Ambient Ozone Pm2.5 Model Dust Quality
WOS Research AreaEnvironmental Sciences & Ecology
WOS SubjectEnvironmental Sciences
Cooperation Status国际
ISSN1309-1042
Department环境变化与地标过程
URL查看原文
PublisherTURKISH NATL COMMITTEE AIR POLLUTION RES & CONTROL-TUNCAP
SubtypeArticle
Citation statistics
Document Type期刊论文
Identifierhttp://ir.itpcas.ac.cn/handle/131C11/9315
Collection图书馆
Corresponding AuthorChen, L (Chen, Li); Bai, ZP (Bai, Zhipeng)
Affiliation1.Tianjin Normal Univ, Sch Geog & Environm Sci, Tianjin, Peoples R China;
2.Chinese Acad Sci, Inst Tibetan Plateau Res, Beijing, Peoples R China;
3.Chinese Res Inst Environm Sci, State Key Lab Environm Criteria & Risk Assessment, Beijing, Peoples R China;
4.CSIRO Energy, N Ryde, Australia;
5.Chinese Res Inst Environm Sci, Vehicle Emiss Control Ctr, Beijing, Peoples R China.
Recommended Citation
GB/T 7714
Gao, S ,Cong, ZY ,Yu, H ,et al. Estimation of background concentration of PM in Beijing using a statistical integrated approach[J]. ATMOSPHERIC POLLUTION RESEARCH,2019,10(3):858-867.
APA Gao, S .,Cong, ZY .,Yu, H .,Sun, YL .,Mao, J .,...&Bai, ZP .(2019).Estimation of background concentration of PM in Beijing using a statistical integrated approach.ATMOSPHERIC POLLUTION RESEARCH,10(3),858-867.
MLA Gao, S ,et al."Estimation of background concentration of PM in Beijing using a statistical integrated approach".ATMOSPHERIC POLLUTION RESEARCH 10.3(2019):858-867.
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