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DOI10.5194/acp-18-6543-2018
The use of hierarchical clustering for the design of optimized monitoring networks
Soares, Joana1; Makar, Paul Andrew1; Aklilu, Yayne2; Akingunola, Ayodeji1
2018-05-08
发表期刊ATMOSPHERIC CHEMISTRY AND PHYSICS
ISSN1680-7316
EISSN1680-7324
出版年2018
卷号18期号:9页码:6543-6566
文章类型Article
语种英语
国家Canada
英文摘要

Associativity analysis is a powerful tool to deal with large-scale datasets by clustering the data on the basis of (dis) similarity and can be used to assess the efficacy and design of air quality monitoring networks. We describe here our use of Kolmogorov-Zurbenko filtering and hierarchical clustering of NO2 and SO2 passive and continuous monitoring data to analyse and optimize air quality networks for these species in the province of Alberta, Canada. The methodology applied in this study assesses dissimilarity between monitoring station time series based on two metrics: 1 - R, R being the Pearson correlation coefficient, and the Euclidean distance; we find that both should be used in evaluating monitoring site similarity. We have combined the analytic power of hierarchical clustering with the spatial information provided by deterministic air quality model results, using the gridded time series of model output as potential station locations, as a proxy for assessing monitoring network design and for network optimization. We demonstrate that clustering results depend on the air contaminant analysed, reflecting the difference in the respective emission sources of SO2 and NO2 in the region under study. Our work shows that much of the signal identifying the sources of NO2 and SO2 emissions resides in shorter timescales (hourly to daily) due to shortterm variation of concentrations and that longer-term averages in data collection may lose the information needed to identify local sources. However, the methodology identifies stations mainly influenced by seasonality, if larger timescales (weekly to monthly) are considered. We have performed the first dissimilarity analysis based on gridded air quality model output and have shown that the methodology is capable of generating maps of subregions within which a single station will represent the entire subregion, to a given level of dissimilarity. We have also shown that our approach is capable of identifying different sampling methodologies as well as outliers (stations' time series which are markedly different from all others in a given dataset).


领域地球科学
收录类别SCI-E ; SSCI
WOS记录号WOS:000431733900004
WOS关键词AMBIENT AIR-QUALITY ; NITROGEN-DIOXIDE ; PASSIVE SAMPLERS ; TIME-SERIES ; POLLUTION ; SO2 ; O-3 ; NO2 ; METHODOLOGY ; PM10
WOS类目Environmental Sciences ; Meteorology & Atmospheric Sciences
WOS研究方向Environmental Sciences & Ecology ; Meteorology & Atmospheric Sciences
引用统计
文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/30768
专题地球科学
作者单位1.Air Qual Res Div, Air Qual Modelling & Integrat Sect, Environm & Climate Change, Toronto, ON M3H 5T4, Canada;
2.Alberta Environm & Pk, Environm Monitoring & Sci Div, Edmonton, AB T5J 5C6, Canada
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GB/T 7714
Soares, Joana,Makar, Paul Andrew,Aklilu, Yayne,et al. The use of hierarchical clustering for the design of optimized monitoring networks[J]. ATMOSPHERIC CHEMISTRY AND PHYSICS,2018,18(9):6543-6566.
APA Soares, Joana,Makar, Paul Andrew,Aklilu, Yayne,&Akingunola, Ayodeji.(2018).The use of hierarchical clustering for the design of optimized monitoring networks.ATMOSPHERIC CHEMISTRY AND PHYSICS,18(9),6543-6566.
MLA Soares, Joana,et al."The use of hierarchical clustering for the design of optimized monitoring networks".ATMOSPHERIC CHEMISTRY AND PHYSICS 18.9(2018):6543-6566.
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