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Development of a vehicle emission inventory with high temporal–spatial resolution based on NRT traffic data and its impact on air pollution in Beijing – Part 2: Impact of vehicle emission on urban air quality

机译:基于NRT交通数据开发具有高时空分辨率的车辆排放清单及其对北京空气污染的影响-第2部分:车辆排放对城市空气质量的影响

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A companion paper developed a vehicle emission inventory with high temporal–spatial resolution (HTSVE) with a bottom-up methodology based on local emission factors, complemented with the widely used emission factors of COPERT model and near-real-time (NRT) traffic data on a specific road segment for 2013 in urban Beijing (Jing et al., 2016), which is used to investigate the impact of vehicle pollution on air pollution in this study. Based on the sensitivity analysis method of switching on/off pollutant emissions in the Chinese air quality forecasting model CUACE, a modelling study was carried out to evaluate the contributions of vehicle emission to the air pollution in Beijing's main urban areas in the periods of summer (July) and winter (December) 2013. Generally, the CUACE model had good performance of the concentration simulation of pollutants. The model simulation has been improved by using HTSVE. The vehicle emission contribution (VEC) to ambient pollutant concentrations not only changes with seasons but also changes with time. The mean VEC, affected by regional pollutant transports significantly, is 55.4 and 48.5?% for NOsub2/sub and 5.4 and 10.5?% for PMsub2.5/sub in July and December 2013 respectively. Regardless of regional transports, relative vehicle emission contribution (RVEC) to NOsub2/sub is 59.2 and 57.8?% in July and December 2013, while it is 8.7 and 13.9?% for PMsub2.5/sub. The RVEC to PMsub2.5/sub is lower than the PMsub2.5/sub contribution rate for vehicle emission in total emission, which may be due to dry deposition of PMsub2.5/sub from vehicle emission in the near-surface layer occuring more easily than from elevated source emission.
机译:伴随论文开发了一种具有高时空分辨率(HTSVE)的车辆排放清单,并采用了基于局部排放因子的自底向上方法,并补充了COPERT模型和近实时(NRT)交通数据的广泛使用的排放因子在北京市区2013年的特定路段上(Jing等人,2016),该数据用于研究车辆污染对空气污染的影响。基于中国空气质量预测模型CUACE中开关污染物排放的敏感性分析方法,进行了建模研究,以评估夏季夏季北京主要城市地区车辆排放对空气污染的贡献( 2013年7月)和冬季(12月)。总体而言,CUACE模型在污染物浓度模拟方面表现良好。使用HTSVE改进了模型仿真。车辆排放对环境污染物浓度的贡献不仅随季节变化,而且随时间变化。 2013年7月和2013年12月,NO 2 的平均VEC受区域污染物迁移的影响分别为55.4%和48.5%,PM 2.5 的5.4%和10.5%。无论区域交通方式如何,2013年7月和2013年12月,NO 2 的相对车辆排放贡献(RVEC)分别为59.2和57.8%,而PM 2.5分别为8.7和13.9%。子>。 PM 2.5 的RVEC低于车辆排放中PM 2.5 对车辆排放的贡献率,这可能是由于PM 2.5

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