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Integrated data-driven modeling to estimate PM2.5 pollution from heavy-duty truck transportation activity over metropolitan area

机译:集成的数据驱动模型可估算大城市地区重型卡车运输活动中的PM2.5污染

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Based on the national emission inventory data from different countries, heavy-duty trucks are the highest on-road PM2.5 emitters and their representation is estimated disproportionately using current modeling methods. This study expands current understanding of the impact of heavy-duty truck movement on the overall PM2.5 pollution in urban areas through an integrated data-driven modeling methodology that could more closely represent the truck transportation activities. A detailed integrated modeling methodology is presented in the paper to estimate urban truck related PM2.5 pollution by using a robust spatial regression-based truck activity model, the mobile source emission and Gaussian dispersion models. In this research, finely resolved spatial-temporal emissions were calculated using bottom-up approach, where hourly truck activity and detailed truck-class specific emissions rates are used as inputs. To validate the proposed methodology, the Cincinnati urban area was selected as a case study site and the proposed truck model was used with U.S. EPA's MOVES and AERMOD models. The heavy-duty truck released PM2.5 pollution is estimated using observed concentrations at the urban air quality monitoring stations. The monthly air quality trend estimated using our methodology matches very well with the observed trend at two different continuous monitoring stations with Spearman's rank correlation coefficient of 0.885. Based on emission model results, it is found that 71 percent of the urban mobile-source PM2.5 emissions are caused by trucks and also 21 percent of the urban overall ambient PM2.5 concentrations can be attributed to trucks in Cincinnati urban area. (C) 2016 Elsevier Ltd. All rights reserved.
机译:根据不同国家/地区的国家排放清单数据,重型卡车是道路上PM2.5排放量最高的排放者,使用当前的建模方法不合理地估计了它们的表示。这项研究通过一种集成的数据驱动的建模方法来扩展当前对重型卡车运动对城市总体PM2.5污染影响的理解,该模型可以更紧密地代表卡车的运输活动。本文提出了一种详细的综合建模方法,以通过使用基于空间回归的鲁棒卡车活动模型,移动源排放和高斯离散模型来估计与城市卡车相关的PM2.5污染。在这项研究中,使用自下而上的方法计算了精细分解的时空排放量,其中每小时卡车活动和详细的卡车级特定排放率用作输入。为了验证所提出的方法,选择了辛辛那提市区作为案例研究地点,并将所提出的卡车模型与美国EPA的MOVES和AERMOD模型一起使用。重型卡车释放的PM2.5污染是根据城市空气质量监测站的观测浓度估算的。使用我们的方法估算的每月空气质量趋势与在两个不同的连续监测站(斯皮尔曼等级相关系数为0.885)观察到的趋势非常吻合。根据排放模型结果,发现在辛辛那提市区,有71%的城市移动源PM2.5排放是由卡车引起的,还有21%的城市总体环境PM2.5浓度可归因于卡车。 (C)2016 Elsevier Ltd.保留所有权利。

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