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Spatial and Temporal Assessment of Air Pollution in the Calgary, Alberta Air Zone

机译:阿尔伯塔省空气区卡尔加里空气污染的时空评估

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Canadian air zones represent a complex mixture of urban and rural land-use impacted by diverse emissions sources. The Calgary Spatial and Temporal Exposure Modeling (CSTEM) Study was designed to provide spatial and temporal air quality information for Calgary and surrounding areas to support local air zone management strategies and air pollution health studies. CSTEM collected two-week integrated measurements of nitrogen dioxide (NO2), volatile organic compounds, particulate matter (PM10, PM2.5), black carbon (BC), and PM-components at 125 sites in summer (August 5-19, 2015) and winter (January 20-February 3, 2016). Seasonal trends were assessed by collecting two-week integrated data every two weeks at four temporal sites across the city from March 25, 2015-April 27, 2016. NO2 and VOCs were measured using Ogawa Passive Samplers and Organic Vapor Passive Samplers. Gravimetric PM2.5 and PM1.0 measurements were collected using Harvard Cascade Impactors with 37 mm Teflon filters. PM2.5 samples were analyzed for elemental composition using HF-nitric acid digested inductively coupled plasma mass spectrometry. BC was measured via optical scanning of gravimetric PM2.5 samples using a SootScan Model OT21 Transmissometer. Continuous BC was collected at 40 sites using microAethalometers. Analysis of collocated BC samples showed good agreement (R2>0.70) between the methods. Air pollution data were combined with land-use information to develop land-use regression (LUR) models. Stepwise selection and regression tree methods were used to identify best predictors. The Getis-Ord Gi statistic and global Moran's I were applied to assess local variation of pollutants. Land use regressionLUR ordinary least squares (OLS) regression and geographically weighted regression (GWR) techniques. Summer results follow. NO2 displayed greater local variation compared with PM2.5. Therefore, GWR and regional OLS models were developed for NO2. Global OLS models performed poorly, predicting only 56% of the variability in NO2. Regional OLS models performed slightly better, with R2 ranging from 0.56-0.60. GWR models performed best, explaining > 80% of the global variability in NO2, with local R2 ranging from 0.56-0.87 (Q25=0.72, Q75=0.84). ANOVA tests confirmed that GWR provided a statistically significant improvement over OLS. Industrial zoning, infrastructure and major roads were significant predictors of NO2. Industrial zoning, PM emitting facilities, and local roads were major predictors of PM2.5. CSTEM results provide insight into best approaches for characterizing air pollution in a large, diverse air zone. Future analyses will focus on seasonal and temporal modeling; modeling BC, VOCs, and metals; and integrating data from chemical transport models, satellite remote sensing, and continuous regulatory monitoring.
机译:加拿大航空区是受多种排放源影响的城市和农村土地利用的复杂混合体。卡尔加里时空暴露模型研究(CSTEM)旨在为卡尔加里及周边地区提供时空空气质量信息,以支持本地空气区管理策略和空气污染健康研究。 CSTEM于夏季(2015年8月5日至19日)对125个站点的二氧化氮(NO2),挥发性有机化合物,颗粒物(PM10,PM2.5),黑碳(BC)和PM成分进行了为期两周的综合测量。 )和冬季(2016年1月20日至2月3日)。通过从2015年3月25日至2016年4月27日在城市的四个临时站点每两周收集两周的综合数据来评估季节性趋势。使用Ogawa被动式采样器和有机蒸气被动式采样器测量NO2和VOCs。重量级PM2.5和PM1.0的测量是使用带有37毫米特氟龙滤光片的哈佛级联撞击器收集的。使用HF-硝酸消化的电感耦合等离子体质谱法分析PM2.5样品的元素组成。 BC是使用SootScan OT21型透射计通过重量分析PM2.5样品的光学扫描来测量的。使用microAethalometers在40个地点收集连续的BC。并置的BC样品的分析表明,两种方法之间具有良好的一致性(R2> 0.70)。将空气污染数据与土地利用信息相结合,以开发土地利用回归(LUR)模型。使用逐步选择和回归树方法来确定最佳预测变量。使用Getis-Ord Gi统计量和全球Moran's I来评估污染物的局部变化。土地利用回归LUR普通最小二乘(OLS)回归和地理加权回归(GWR)技术。夏季结果如下。与PM2.5相比,NO2的局部变化更大。因此,针对NO2开发了GWR和区域OLS模型。全球OLS模型表现不佳,仅预测了NO2变化的56%。区域OLS模型的性能稍好一些,R2范围为0.56-0.60。 GWR模型表现最好,解释了> 80%的NO2全局变化,局部R2范围为0.56-0.87(Q25 = 0.72,Q75 = 0.84)。方差分析测试证实,GWR比OLS具有统计学上的显着改善。工业区划,基础设施和主要道路是NO2的重要预测指标。工业区划,PM排放设施和当地道路是PM2.5的主要预测指标。 CSTEM的结果提供了洞悉表征大型,多样化空气区域中空气污染的最佳方法的见识。未来的分析将集中在季节和时间建模上;模拟BC,VOC和金属;并整合来自化学运输模型,卫星遥感和持续监管监控的数据。

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