Department of Civil, Structural and Environmental Engineering, University of Dublin Trinity College, Dublin 2, Ireland.
Department of Civil, Structural and Environmental Engineering, University of Dublin Trinity College, Dublin 2, Ireland.
Sci Total Environ. 2018 Jul 15;630:1324-1334. doi: 10.1016/j.scitotenv.2018.02.317. Epub 2018 Mar 7.
Estimating pollutant concentrations at a local and regional scale is essential in environmental and health policy decision making. Here we present a novel land use regression (LUR) modelling methodology that exploits the high temporal resolution of fixed-site monitoring (FSM) to produce a national-scale air quality model for the key pollutant NO. The methodology partitions concentration time series from a national FSM network into wind-dependent sectors or "wedges". A LUR model is derived using predictor variables calculated within the directional wind sectors, and compared against the long-term average concentrations within each sector. Validation results, based on 15 FSM training sites, show that the model captured 78% of the spatial variability in NO across the Republic of Ireland. This compares favourably to traditional LUR models based on purpose-designed monitoring campaigns despite using approximately half the number of monitoring points. Results also demonstrate the value of incorporating the relative position of emission source and receptor into the empirical LUR model structure. We applied the model at a high-resolution across the Republic of Ireland to enable applications such as the study of environmental exposure and human health, assessing representativeness of air quality monitoring networks and informing environmental management and policy makers. While the study focuses on Ireland, the methodology also has potential applicability for other criteria pollutants where appropriate FSM and meteorological networks exist.
在环境和健康政策决策中,估算局部和区域尺度的污染物浓度至关重要。在这里,我们提出了一种新的基于土地利用的回归(LUR)建模方法,该方法利用固定站点监测(FSM)的高时间分辨率来生成关键污染物 NO 的全国范围空气质量模型。该方法将来自全国 FSM 网络的浓度时间序列划分为依赖风向的扇区或“楔形”。使用在定向风扇区内计算的预测变量来推导 LUR 模型,并将其与每个扇区内的长期平均浓度进行比较。基于 15 个 FSM 培训站点的验证结果表明,该模型捕捉到了爱尔兰共和国境内 NO 空间变异性的 78%。与基于专门设计的监测活动的传统 LUR 模型相比,尽管使用了大约一半数量的监测点,但该模型的性能表现相当出色。结果还表明,将排放源和受体的相对位置纳入经验 LUR 模型结构具有价值。我们在爱尔兰共和国全境以高分辨率应用该模型,以实现环境暴露和人类健康研究、评估空气质量监测网络的代表性以及为环境管理和决策者提供信息等应用。虽然该研究侧重于爱尔兰,但该方法也有可能适用于其他具有适当 FSM 和气象网络的标准污染物。