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首页> 外文期刊>Journal of the air & waste management association >Lagrangian Dispersion Modeling of Vehicular Emissions from a Highway in Complex Terrain
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Lagrangian Dispersion Modeling of Vehicular Emissions from a Highway in Complex Terrain

机译:复杂地形中公路车辆排放的拉格朗日色散建模

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摘要

Transit traffic through the Austrian Alps is of major concern in government policy. Pollutant burdens resulting from such traffic are discussed widely in Austrian politics and have already led to measures to restrict traffic on transit routes. In the course of an environmental assessment study, comprehensive measurements were performed. These included air quality observations using passive samplers, a differential optical absorption spectroscopy system, a mobile and a fixed air quality monitoring station, and meteorological observations. As was evident from several previous studies, dispersion modeling in such areas of complex terrain and, moreover, with frequent calm wind conditions, is difficult to handle. Further, in the case presented here, different pollutant sources had to be treated simultaneously (e.g., road networks, exhaust chimneys from road tunnels, and road tunnel portals). No appropriate system for modeling all these factors has so far appeared in the literature. A prognostic wind field model coupled with a Lagrangian dispersion model is thus presented here and is designed to treat all these factors. A comparison of the modeling system with results from passive samplers and from a fixed air quality monitoring station proved the ability of the model to provide reasonable figures for concentration distributions along the A10.
机译:通过奥地利阿尔卑斯山的过境交通是政府政策中的主要问题。由这种交通造成的污染物负担在奥地利政治中得到了广泛讨论,并且已经导致采取措施限制过境路线上的交通。在环境评估研究的过程中,进行了全面的测量。这些措施包括使用无源采样器进行的空气质量观测,差分光学吸收光谱系统,移动式和固定式空气质量监测站以及气象观测。从以前的几项研究中可以明显看出,在复杂地形的区域中进行色散建模非常困难,此外,在风平常的情况下,很难进行建模。此外,在这里介绍的情况下,必须同时处理不同的污染物源(例如,道路网,公路隧道的烟囱和公路隧道的入口)。迄今为止,文献中还没有合适的系统来模拟所有这些因素。因此,在此提出了一个预兆风场模型和一个拉格朗日色散模型,并将其设计为处理所有这些因素。将建模系统与被动采样器和固定空气质量监测站的结果进行了比较,证明了该模型能够为沿A10的浓度分布提供合理数字的能力。

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