首页> 外文期刊>Atmosphere >A High Resolution Spatiotemporal Model for In-Vehicle Black Carbon Exposure: Quantifying the In-Vehicle Exposure Reduction Due to the Euro 5 Particulate Matter Standard Legislation
【24h】

A High Resolution Spatiotemporal Model for In-Vehicle Black Carbon Exposure: Quantifying the In-Vehicle Exposure Reduction Due to the Euro 5 Particulate Matter Standard Legislation

机译:车载黑碳暴露的高分辨率时空模型:量化因欧5颗粒物标准立法而导致的车载暴露​​减少量

获取原文
           

摘要

Several studies have shown that a significant amount of daily air pollution exposure is inhaled during trips. In this study, car drivers assessed their own black carbon exposure under real-life conditions (223 h of data from 2013). The spatiotemporal exposure of the car drivers is modeled using a data science approach, referred to as ?¢????microscopic land-use regression?¢???? (???μLUR). In-vehicle exposure is highly dynamical and is strongly related to the local traffic dynamics. An extensive set of potential covariates was used to model the in-vehicle black carbon exposure in a temporal resolution of 10 s. Traffic was retrieved directly from traffic databases and indirectly by attributing the trips through a noise map as an alternative traffic source. Modeling by generalized additive models (GAM) shows non-linear effects for meteorology and diurnal traffic patterns. A fitted diurnal pattern explains indirectly the complex diurnal variability of the exposure due to the non-linear interaction between traffic density and distance to the preceding vehicles. Comparing the strength of direct traffic attribution and indirect noise map-based traffic attribution reveals the potential of noise maps as a proxy for traffic-related air pollution exposure. An external validation, based on a dataset gathered in 2010?¢????2011, quantifies the exposure reduction inside the vehicles at 33% (mean) and 50% (median). The EU PM Euro 5 PM emission standard (in force since 2009) explains the largest part of the discrepancy between the measurement campaign in 2013 and the validation dataset. The ???μLUR methodology provides a high resolution, route-sensitive, seasonal and meteorology-sensitive personal exposure estimate for epidemiologists and policy makers.
机译:多项研究表明,旅途中会吸入大量的日常空气污染。在这项研究中,汽车驾驶员评估了他们在现实生活中的黑碳暴露量(2013年的223小时数据)。使用数据科学方法对汽车驾驶员的时空暴露进行建模,这种方法称为“微观土地利用回归”。 (???μLUR)。车载暴露是高度动态的,并且与本地交通动态密切相关。广泛的潜在协变量集用于以10 s的时间分辨率模拟车内黑碳暴露。可以直接从交通数据库中检索交通,也可以通过将交通图归因于噪音图作为替代交通来源来间接获取交通。广义加性模型(GAM)进行的建模显示了气象和日流量模式的非线性影响。拟合的昼夜模式间接地解释了由于交通密度和到前一辆车的距离之间的非线性相互作用而导致的复杂的昼夜变化。通过比较直接交通归因和基于间接噪声图的交通归因的强度,可以发现噪声图可以替代交通相关的空气污染暴露。外部验证基于2010年2011年收集的数据集,将车辆内的暴露减少量量化为33%(平均)和50%(中位数)。 EU PM Euro 5 PM排放标准(自2009年生效)解释了2013年的衡量活动与验证数据集之间最大的差异。 μLUR方法为流行病学家和决策者提供了高分辨率,对路线敏感,对季节和气象敏感的个人接触估计。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号