Henderson Sarah B, Beckerman Bernardo, Jerrett Michael, Brauer Michael
School of Occupational and Environmental Hygiene, The University of British Columbia, Vancouver, British Columbia, Canada.
Environ Sci Technol. 2007 Apr 1;41(7):2422-8. doi: 10.1021/es0606780.
Land use regression (LUR) is a promising technique for predicting ambient air pollutant concentrations at high spatial resolution. We expand on previous work by modeling oxides of nitrogen and fine particulate matter in Vancouver, Canada, using two measures of traffic. Systematic review of historical data identified optimal sampling periods for NO and N02. Integrated 14-day mean concentrations were measured with passive samplers at 116 sites in the spring and fall of 2003. Study estimates for annual mean NO and NO2 ranged from 5.4-98.7 and 4.8-28.0 ppb, respectively. Regulatory measurements ranged from 4.8-29.7 and 9.0-24.1 ppb and exhibited less spatial variability. Measurements of particle mass concentration (PM2.5) and light absorbance (ABS) were made at a subset of 25 sites during another campaign. Fifty-five variables describing each sampling site were generated in a Geographic Information System (GIS) and linear regression models for NO, NO2, PM2.5, and ABS were built with the most predictive covariates. Adjusted R(2) values ranged from 0.39 to 0.62 and were similar across traffic metrics. Resulting maps show the distribution of NO to be more heterogeneous than that of NO2, supporting the usefulness of this approach for assessing spatial patterns of traffic-related pollution.
土地利用回归(LUR)是一种很有前景的技术,可用于在高空间分辨率下预测环境空气中污染物的浓度。我们在之前工作的基础上进行拓展,在加拿大温哥华使用两种交通指标对氮氧化物和细颗粒物进行建模。对历史数据的系统回顾确定了一氧化氮(NO)和二氧化氮(NO₂)的最佳采样期。2003年春季和秋季,使用被动采样器在116个地点测量了14天的综合平均浓度。研究估计的一氧化氮和二氧化氮年平均浓度分别为5.4 - 98.7 ppb和4.8 - 28.0 ppb。监管测量值范围为4.8 - 29.7 ppb和9.0 - 24.1 ppb,且空间变异性较小。在另一次监测活动中,在25个地点的子集中测量了颗粒物质量浓度(PM2.5)和光吸收(ABS)。在地理信息系统(GIS)中生成了描述每个采样点的55个变量,并使用预测性最强的协变量建立了一氧化氮、二氧化氮、PM2.5和ABS的线性回归模型。调整后的R²值范围为0.39至0.62,并且在不同交通指标间相似。生成的地图显示,一氧化氮的分布比二氧化氮更不均匀,这支持了该方法在评估与交通相关污染的空间模式方面的有用性。