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Harbor and Intra-City Drivers of Air Pollution: Findings from a Land Use Regression Model Durban South Africa

机译:港口和城市内部的空气污染驱动因素:来自南非德班的土地利用回归模型的调查结果

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摘要

Multiple land use regression models (LUR) were developed for different air pollutants to characterize exposure, in the Durban metropolitan area, South Africa. Based on the European Study of Cohorts for Air Pollution Effects (ESCAPE) methodology, concentrations of particulate matter (PM and PM ), sulphur dioxide (SO ), and nitrogen dioxide (NO ) were measured over a 1-year period, at 41 sites, with Ogawa Badges and 21 sites with PM Monitors. Sampling was undertaken in two regions of the city of Durban, South Africa, one with high levels of heavy industry as well as a harbor, and the other small-scale business activity. Air pollution concentrations showed a clear seasonal trend with higher concentrations being measured during winter (25.8, 4.2, 50.4, and 20.9 µg/m for NO , SO , PM , and PM , respectively) as compared to summer (10.5, 2.8, 20.5, and 8.5 µg/m for NO , SO , PM , and PM , respectively). Furthermore, higher levels of NO and SO were measured in south Durban as compared to north Durban as these are industrial related pollutants, while higher levels of PM were measured in north Durban as compared to south Durban and can be attributed to either traffic or domestic fuel burning. The LUR NO models for annual, summer, and winter explained 56%, 41%, and 63% of the variance with elevation, traffic, population, and Harbor being identified as important predictors. The SO models were less robust with lower R annual (37%), summer (46%), and winter (46%) with industrial and traffic variables being important predictors. The R for PM models ranged from 52% to 80% while for PM models this range was 61–76% with traffic, elevation, population, and urban land use type emerging as predictor variables. While these results demonstrate the influence of industrial and traffic emissions on air pollution concentrations, our study highlighted the importance of a Harbor variable, which may serve as a proxy for NO concentrations suggesting the presence of not only ship emissions, but also other sources such as heavy duty motor vehicles associated with the port activities.
机译:为不同的空气污染物开发了多元土地使用回归模型(LUR),以表征南非德班大都市地区的曝光。基于欧洲研究的空气污染影响(逃逸)方法,在41个位置在1年期间测量颗粒物质(PM和PM),二氧化硫(SO)和二氧化氮(NO)的浓度,Oogawa徽章和21个与PM监视器的网站。抽样是在南非德班市的两个地区进行的,其中一个高水平的重工业以及港口以及其他小规模的商业活动。空气污染浓度显示冬季(分别为夏季(10.5,2.8,20.5,分别为8.5μg/ m,分别为0.5μg,pm和pm)。此外,与北德班相比,南德班的南德班等较高水平的尚未测量,因为这些是工业相关的污染物,而与南德班相比,北德班的PM水平较高,并且可以归因于交通或国内燃料燃烧。 LUR没有年度,夏季和冬季的模型解释了56%,41%和63%的差异,差异,交通,人口和港口被确定为重要的预测因子。因此模型较低的较低年度(37%),夏季(46%)和冬季(46%),具有工业和交通变量的重要预测因素。 PM模型的R为PM型号为52%至80%,此范围为61-76%,交通,海拔,人口和城市土地利用型作为预测因子变量。虽然这些结果表明了工业和交通排放对空气污染浓度的影响,但我们的研究突出了港口变量的重要性,这可能成为没有浓度的代理,这表明不仅存在船舶排放,而且还有其他来源与港口活动相关的重型机动车辆。

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