Dipartimento di Scienze Ambientali, Informatica e Statistica, Università Ca' Foscari, Dorsoduro 2137, 30123 Venezia, Italy.
Environ Sci Pollut Res Int. 2012 Sep;19(8):3142-51. doi: 10.1007/s11356-012-0858-4. Epub 2012 Aug 8.
This study presents a procedure to differentiate the local and remote sources of particulate-bound polycyclic aromatic hydrocarbons (PAHs).
Data were collected during an extended PM(2.5) sampling campaign (2009-2010) carried out for 1 year in Venice-Mestre, Italy, at three stations with different emissive scenarios: urban, industrial, and semirural background. Diagnostic ratios and factor analysis were initially applied to point out the most probable sources. In a second step, the areal distribution of the identified sources was studied by applying the discriminant analysis on factor scores. Third, samples collected in days with similar atmospheric circulation patterns were grouped using a cluster analysis on wind data. Local contributions to PM(2.5) and PAHs were then assessed by interpreting cluster results with chemical data.
Results evidenced that significantly lower levels of PM(2.5) and PAHs were found when faster winds changed air masses, whereas in presence of scarce ventilation, locally emitted pollutants were trapped and concentrations increased. This way, an estimation of pollutant loads due to local sources can be derived from data collected in days with similar wind patterns. Long-range contributions were detected by a cluster analysis on the air mass back-trajectories. Results revealed that PM(2.5) concentrations were relatively high when air masses had passed over the Po Valley. However, external sources do not significantly contribute to the PAHs load.
The proposed procedure can be applied to other environments with minor modifications, and the obtained information can be useful to design local and national air pollution control strategies.
本研究提出了一种区分颗粒态多环芳烃(PAHs)本地和远程源的方法。
在意大利威尼斯-梅斯特进行的为期 1 年的 PM2.5 扩展采样活动(2009-2010 年)中收集了数据,该采样活动在三个具有不同排放情景的站点进行:城市、工业和半农村背景。最初应用诊断比和因子分析来指出最可能的来源。在第二步中,通过在因子得分上应用判别分析来研究所识别来源的面积分布。第三,通过对风数据进行聚类分析,将具有相似大气环流模式的采样日进行分组。然后通过解释聚类结果与化学数据来评估 PM2.5 和 PAHs 的本地贡献。
结果表明,当较快的风改变大气团时,PM2.5 和 PAHs 的水平明显较低,而在通风不足的情况下,本地排放的污染物被捕获,浓度增加。这样,就可以根据具有相似风模式的日子收集的数据来估计本地源的污染物负荷。通过对大气团后轨迹的聚类分析检测到长程贡献。结果表明,当大气团经过波河河谷时,PM2.5 浓度相对较高。然而,外部来源对 PAHs 负荷的贡献并不显著。
提出的程序可以在进行微小修改的情况下应用于其他环境,并且获得的信息可以有助于设计本地和国家空气污染控制策略。