Vardoulakis Sotiris, Chalabi Zaid, Fletcher Tony, Grundy Chris, Leonardi Giovanni S
Public & Environmental Health Research Unit, London School of Hygiene & Tropical Medicine, Keppel Street, London WC1E 7HT, UK.
Sci Total Environ. 2008 May 15;394(2-3):244-51. doi: 10.1016/j.scitotenv.2008.01.037. Epub 2008 Mar 4.
In urban areas, road traffic is a major source of carcinogenic polycyclic aromatic hydrocarbons (PAH), thus any changes in traffic patterns are expected to affect PAH concentrations in ambient air. Exposure to PAH and other traffic-related air pollutants has often been quantified in a deterministic manner that disregards the various sources of uncertainty in the modelling systems used. In this study, we developed a generic method for handling uncertainty in population exposure models. The method was applied to quantify the uncertainty in population exposure to benzo[a]pyrene (BaP) before and after the implementation of a traffic management intervention. This intervention would affect the movement of vehicles in the studied area and consequently alter traffic emissions, pollutant concentrations and population exposure. Several models, including an emission calculator, a dispersion model and a Geographic Information System were used to quantify the impact of the traffic management intervention. We established four exposure zones defined by distance of residence postcode centroids from major road or intersection. A stochastic method was used to quantify the uncertainty in the population exposure model. The method characterises uncertainty using probability measures and propagates it applying Monte Carlo analysis. The overall model predicted that the traffic management scheme would lead to a minor reduction in mean population exposure to BaP in the studied area. However, the uncertainty associated with the exposure estimates was much larger than this reduction. The proposed method is generic and provides realistic estimates of population exposure to traffic-related pollutants, as well as characterises the uncertainty in these estimates. This method can be used within a decision support tool to evaluate the impact of alternative traffic management policies.
在城市地区,道路交通是致癌性多环芳烃(PAH)的主要来源,因此交通模式的任何变化都可能影响环境空气中的PAH浓度。以往对PAH及其他与交通相关的空气污染物暴露的量化往往采用确定性方法,而忽略了所用建模系统中存在的各种不确定性来源。在本研究中,我们开发了一种处理人群暴露模型不确定性的通用方法。该方法用于量化交通管理干预实施前后人群对苯并[a]芘(BaP)暴露的不确定性。这种干预会影响研究区域内车辆的行驶,进而改变交通排放、污染物浓度和人群暴露情况。我们使用了包括排放计算器、扩散模型和地理信息系统在内的多种模型来量化交通管理干预的影响。我们根据居住邮政编码中心距主要道路或交叉路口的距离确定了四个暴露区。采用随机方法量化人群暴露模型中的不确定性。该方法使用概率测度来表征不确定性,并通过蒙特卡洛分析进行传播。总体模型预测,交通管理方案将导致研究区域内人群对BaP的平均暴露略有降低。然而,与暴露估计相关的不确定性远大于这一降低幅度。所提出的方法具有通用性,能提供人群对与交通相关污染物暴露的实际估计值,并能表征这些估计值中的不确定性。该方法可用于决策支持工具,以评估替代交通管理政策的影响。