Gouveia Sónia, Scotto Manuel G, Monteiro Alexandra, Alonso Andres M
Instituto de Engenharia Electrónica e Informática de Aveiro (IEETA) and Centro de I&D em Matemática e Aplicações (CIDMA), Universidade de Aveiro, Campo Universitário de Santiago, 3810-193, Aveiro, Portugal.
CEMAT, Instituto Superior Técnico, Universidade de Lisboa, Lisboa, Portugal.
Environ Monit Assess. 2015 Nov;187(11):694. doi: 10.1007/s10661-015-4901-z. Epub 2015 Oct 19.
This paper aims at providing a variance/covariance profile of a set of 36 monitoring stations measuring ozone (O3) and nitrogen dioxide (NO2) hourly concentrations, collected over the period 2005-2013, in Portugal mainland. The resulting individual profiles are embedded in a wavelet decomposition-based clustering algorithm in order to identify groups of stations exhibiting similar profiles. The results of the cluster analysis identify three groups of stations, namely urban, suburban/urban/rural, and a third group containing all but one rural stations. The results clearly indicate a geographical pattern among urban stations, distinguishing those located in Lisbon area from those located in Oporto/North. Furthermore, for urban stations, intra-diurnal and daily time scales exhibit the highest variance. This is due to the more relevant chemical activity occurring in high NO2 emissions areas which are responsible for high variability on daily profiles. These chemical processes also explain the reason for NO2 and O3 being highly negatively cross-correlated in suburban and urban sites as compared with rural stations. Finally, the clustering analysis also identifies sites which need revision concerning classification according to environment/influence type.
本文旨在提供一组36个监测站的方差/协方差分布图,这些监测站于2005年至2013年期间在葡萄牙大陆每小时测量一次臭氧(O3)和二氧化氮(NO2)浓度。所得的各个分布图被嵌入到基于小波分解的聚类算法中,以识别呈现相似分布图的监测站组。聚类分析结果识别出三组监测站,即城市监测站、城郊/城市/农村监测站,以及第三组包含除一个农村监测站之外的所有农村监测站。结果清楚地表明城市监测站之间存在地理模式,将位于里斯本地区的监测站与位于波尔图/北部的监测站区分开来。此外,对于城市监测站,日内和每日时间尺度呈现出最高的方差。这是由于在高二氧化氮排放区域发生了更相关的化学活动,这些区域导致每日分布图具有高变异性。这些化学过程也解释了与农村监测站相比,城郊和城市站点中二氧化氮和臭氧高度负相关的原因。最后,聚类分析还识别出根据环境/影响类型在分类方面需要修订的站点。