Wenjuan Zhang, Changsong Zhou, Dong Chen, Zhaohui Du, Yujia Song, Biao Liu, Hao Wu, Zhen Zhang, Hongmin Yang
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China III vehicles were the primary sources of VOCs, NO<sub>x</sub>, and PM<sub>2.5</sub> emissions, and the emissions of China II and below vehicles were also significant. Gasoline and diesel vehicles exhibited similar emission characteristics as light and heavy vehicles, respectively. NEVs achieved almost zero emissions. Heavy emission intensity regions were primarily found in places with a dense road network, while the temporal distribution was mainly influenced by the frequency of residential trips. Between 2018 and 2021, SO<sub>2</sub> and CO<sub>2</sub> emissions continued to rise, but at a gradually slower pace. In addition, an assessment of several emission reduction measures revealed that the government needs to adopt diversified control strategies to maximize emission reductions because the effectiveness of single measures to reduce emissions is limited. The core of future pollution control lies in optimizing the structure of road traffic models, especially in increasing the market share of new energy and strict emission standard vehicles.</p></div>","PeriodicalId":49109,"journal":{"name":"Air Quality Atmosphere and Health","volume":"18 3","pages":"911 - 925"},"PeriodicalIF":2.9000,"publicationDate":"2024-12-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"High-resolution vehicle emission inventory and emission reduction effect evaluation in Pingdingshan City\",\"authors\":\"Wenjuan Zhang, Changsong Zhou, Dong Chen, Zhaohui Du, Yujia Song, Biao Liu, Hao Wu, Zhen Zhang, Hongmin Yang\",\"doi\":\"10.1007/s11869-024-01684-2\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>The COPERT model and ArcGIS were utilized to construct a high-resolution vehicle emission inventory of 1 km × 1 km in Pingdingshan City in 2021, evaluating the emission reduction effects under various measures. 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引用次数: 0
摘要
利用COPERT模型和ArcGIS技术,构建了平顶山市2021年1 km × 1 km的高分辨率车辆排放清清库,评价了不同措施下的减排效果。结果表明,2021年平顶山市机动车VOCs、NOx、SO2、PM2.5和CO2的排放量分别为1.668、10.267、0.023、0.455和3735.940 Gg。其中,对VOCs、SO2和CO2贡献最大的是ldpv(分别为69.2%、49.63%和50.78%);氮氧化物和PM2.5的最大来源是高强度交通工具(分别为71.23%和43.83%)。国ⅲ机动车是VOCs、NOx和PM2.5的主要排放源,国ⅲ及以下机动车的排放也很显著。汽油车和柴油车的排放特征分别与轻型和重型汽车相似。新能源汽车几乎实现了零排放。重排放强度区主要出现在路网密集的地方,时间分布主要受居民出行频率的影响。2018年至2021年期间,二氧化硫和二氧化碳排放量继续上升,但速度逐渐放缓。此外,对几种减排措施的评估表明,由于单一的减排措施效果有限,政府需要采取多样化的控制策略来最大限度地减少排放。未来污染治理的核心在于优化道路交通模式结构,特别是提高新能源和严格排放标准车辆的市场份额。
High-resolution vehicle emission inventory and emission reduction effect evaluation in Pingdingshan City
The COPERT model and ArcGIS were utilized to construct a high-resolution vehicle emission inventory of 1 km × 1 km in Pingdingshan City in 2021, evaluating the emission reduction effects under various measures. According to the findings, Pingdingshan City's vehicle emissions in 2021 were 1.668, 10.267, 0.023, 0.455, and 3735.940 Gg of VOCs, NOx, SO2, PM2.5, and CO2. Among them, the biggest contributors of VOCs, SO2, and CO2 were LDPVs (69.2%, 49.63%, and 50.78%, respectively); the greatest sources of NOx and PM2.5, on the other hand, were HDTs (71.23% and 43.83%, respectively). China III vehicles were the primary sources of VOCs, NOx, and PM2.5 emissions, and the emissions of China II and below vehicles were also significant. Gasoline and diesel vehicles exhibited similar emission characteristics as light and heavy vehicles, respectively. NEVs achieved almost zero emissions. Heavy emission intensity regions were primarily found in places with a dense road network, while the temporal distribution was mainly influenced by the frequency of residential trips. Between 2018 and 2021, SO2 and CO2 emissions continued to rise, but at a gradually slower pace. In addition, an assessment of several emission reduction measures revealed that the government needs to adopt diversified control strategies to maximize emission reductions because the effectiveness of single measures to reduce emissions is limited. The core of future pollution control lies in optimizing the structure of road traffic models, especially in increasing the market share of new energy and strict emission standard vehicles.
期刊介绍:
Air Quality, Atmosphere, and Health is a multidisciplinary journal which, by its very name, illustrates the broad range of work it publishes and which focuses on atmospheric consequences of human activities and their implications for human and ecological health.
It offers research papers, critical literature reviews and commentaries, as well as special issues devoted to topical subjects or themes.
International in scope, the journal presents papers that inform and stimulate a global readership, as the topic addressed are global in their import. Consequently, we do not encourage submission of papers involving local data that relate to local problems. Unless they demonstrate wide applicability, these are better submitted to national or regional journals.
Air Quality, Atmosphere & Health addresses such topics as acid precipitation; airborne particulate matter; air quality monitoring and management; exposure assessment; risk assessment; indoor air quality; atmospheric chemistry; atmospheric modeling and prediction; air pollution climatology; climate change and air quality; air pollution measurement; atmospheric impact assessment; forest-fire emissions; atmospheric science; greenhouse gases; health and ecological effects; clean air technology; regional and global change and satellite measurements.
This journal benefits a diverse audience of researchers, public health officials and policy makers addressing problems that call for solutions based in evidence from atmospheric and exposure assessment scientists, epidemiologists, and risk assessors. Publication in the journal affords the opportunity to reach beyond defined disciplinary niches to this broader readership.