Alam Md Saniul, McNabola Aonghus
a Department of Civil , Structural and Environmental Engineering, Trinity College Dublin , Dublin, Ireland.
J Air Waste Manag Assoc. 2015 May;65(5):628-40. doi: 10.1080/10962247.2015.1006377.
Estimation of daily average exposure to PM10 (particulate matter with an aerodynamic diameter<10 μm) using the available fixed-site monitoring stations (FSMs) in a city poses a great challenge. This is because typically FSMs are limited in number when considering the spatial representativeness of their measurements and also because statistical models of citywide exposure have yet to be explored in this context. This paper deals with the later aspect of this challenge and extends the widely used land use regression (LUR) approach to deal with temporal changes in air pollution and the influence of transboundary air pollution on short-term variations in PM10. Using the concept of multiple linear regression (MLR) modeling, the average daily concentrations of PM10 in two European cities, Vienna and Dublin, were modeled. Models were initially developed using the standard MLR approach in Vienna using the most recently available data. Efforts were subsequently made to (i) assess the stability of model predictions over time; (ii) explores the applicability of nonparametric regression (NPR) and artificial neural networks (ANNs) to deal with the nonlinearity of input variables. The predictive performance of the MLR models of the both cities was demonstrated to be stable over time and to produce similar results. However, NPR and ANN were found to have more improvement in the predictive performance in both cities. Using ANN produced the highest result, with daily PM10 exposure predicted at R2=66% for Vienna and 51% for Dublin. In addition, two new predictor variables were also assessed for the Dublin model. The variables representing transboundary air pollution and peak traffic count were found to account for 6.5% and 12.7% of the variation in average daily PM10 concentration. The variable representing transboundary air pollution that was derived from air mass history (from back-trajectory analysis) and population density has demonstrated a positive impact on model performance.
The implications of this research would suggest that it is possible to produce a model of ambient air quality on a citywide scale using the readily available data. Most European cities typically have a limited FSM network with average daily concentrations of air pollutants as well as available meteorological, traffic, and land-use data. This research highlights that using these data in combination with advanced statistical techniques such as NPR or ANNs will produce reasonably accurate predictions of ambient air quality across a city, including temporal variations. Therefore, this approach reduces the need for additional measurement data to supplement existing historical records and enables a lower-cost method of air pollution model development for practitioners and policy makers.
利用城市中现有的固定监测站(FSM)来估算每日平均PM10(空气动力学直径小于10μm的颗粒物)暴露量是一项巨大挑战。这是因为考虑到其测量的空间代表性,FSM的数量通常有限,而且在这种情况下,尚未探索全市范围暴露的统计模型。本文探讨了这一挑战的后一个方面,并扩展了广泛使用的土地利用回归(LUR)方法,以处理空气污染的时间变化以及跨界空气污染对PM10短期变化的影响。利用多元线性回归(MLR)建模的概念,对欧洲两个城市维也纳和都柏林的PM10日均浓度进行了建模。模型最初在维也纳使用最新可得数据,采用标准MLR方法开发。随后努力(i)评估模型预测随时间的稳定性;(ii)探索非参数回归(NPR)和人工神经网络(ANN)处理输入变量非线性的适用性。两个城市的MLR模型的预测性能被证明随时间稳定且产生相似结果。然而,发现NPR和ANN在两个城市的预测性能上有更大改进。使用ANN产生的结果最高,维也纳每日PM10暴露预测的R2为66%,都柏林为51%。此外,还为都柏林模型评估了两个新的预测变量。代表跨界空气污染和高峰交通流量的变量分别占日均PM10浓度变化的6.5%和12.7%。从气团历史(通过后向轨迹分析)得出的代表跨界空气污染的变量以及人口密度对模型性能有积极影响。
这项研究的启示表明,利用现成数据有可能建立全市范围的环境空气质量模型。大多数欧洲城市通常FSM网络有限,有空气污染物的日均浓度以及可用的气象、交通和土地利用数据。这项研究强调,将这些数据与NPR或ANN等先进统计技术结合使用,将能对城市的环境空气质量,包括时间变化,做出合理准确的预测。因此,这种方法减少了补充现有历史记录所需的额外测量数据的需求,并为从业者和政策制定者提供了一种低成本的空气污染模型开发方法。