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首页> 外文期刊>Stochastic environmental research and risk assessment >Dispersion modelling of air pollution caused by road traffic using a Markov Chain-Monte Carlo model
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Dispersion modelling of air pollution caused by road traffic using a Markov Chain-Monte Carlo model

机译:基于马尔可夫链-蒙特卡罗模型的道路交通空气污染扩散模型

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摘要

Although the strict legislation regarding vehicle emissions in Europe (EURO 4, EURO 5) will lead to a remarkable reduction of emissions in the near future, traffic related air pollution still can be problematic due to a large increase of traffic in certain areas. Many dispersion models for line-sources have been developed to assess the impact of traffic on the air pollution levels near roads, which are in most cases based on the Gaussian equation. Previous studies gave evidence, that such kind of models tend to overestimate concentrations in low wind speed conditions or when the wind direction is almost parallel to the street orientation. This is of particular interest, since such conditions lead generally to the highest observed concentrations in the vicinity of streets. As many air quality directives impose limits on high percentiles of concentrations, it is important to have good estimates of these quantities in environmental assessment studies. The objective of this study is to evaluate a methodology for the computation of especially those high percentiles required by e.g. the EU daughter directive 99/30/EC (for instance the 99.8 percentile for NO_2). The model used in this investigation is a Markov Chain - Monte Carlo model to predict pollutant concentrations, which performs well in low wind conditions as is shown here. While usual Lagrangian models use deterministic time steps for the calculation of the turbulent velocities, the model presented here, uses random time steps from a Monte Carlo simulation and a Markov Chain simulation for the sequence of the turbulent velocities. This results in a physically better approach when modelling the dispersion in low wind speed conditions. When Lagrangian dispersion models are used for regulatory purposes, a meteorological pre-processor is necessary to obtain required input quantities like Monin-Obukhov length and friction velocity from routinely observed data. The model and the meteorological pre-processor applied here, were tested against field data taken near a major motorway south of Vienna. The methodology used is based on input parameters, which are also available in usual environmental assessment studies. Results reveal that the approach examined is useful and leads to reasonable concentration levels near motorways compared to observations.
机译:尽管欧洲对车辆排放的严格立法(EURO 4、EURO 5)将在不久的将来显着减少排放,但由于某些地区的交通量大幅增加,与交通相关的空气污染仍然可能成为问题。已经开发了许多线源的色散模型来评估交通对道路附近空气污染水平的影响,这些模型在大多数情况下基于高斯方程。先前的研究提供了证据,表明这种模型倾向于高估低风速条件下或风向几乎平行于街道方向时的浓度。这一点特别令人感兴趣,因为这种情况通常导致街道附近观察到的最高浓度。由于许多空气质量指令对高百分位数的浓度施加了限制,因此在环境评估研究中对这些数量进行良好的估计非常重要。本研究的目的是评估一种计算方法,特别是欧盟子指令 99/30/EC 要求的高百分位数(例如NO_2的 99.8 百分位数)。本研究中使用的模型是用于预测污染物浓度的马尔可夫链-蒙特卡罗模型,该模型在低风条件下表现良好,如图所示。虽然通常的拉格朗日模型使用确定性时间步长来计算湍流速度,但这里介绍的模型使用蒙特卡罗模拟和马尔可夫链模拟的随机时间步长来计算湍流速度序列。这导致在对低风速条件下的色散进行建模时,物理上更好的方法。当拉格朗日色散模型用于监管目的时,需要气象预处理器从常规观测数据中获取所需的输入量,如莫宁-奥布霍夫长度和摩擦速度。该模型和此处应用的气象预处理器是针对维也纳以南一条主要高速公路附近拍摄的现场数据进行的测试。所使用的方法基于输入参数,这些参数在通常的环境评估研究中也可用。结果表明,与观测结果相比,所研究的方法是有用的,并且可以在高速公路附近获得合理的浓度水平。

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