Resolving the effect of roadside vegetation barriers as a near-road air pollution mitigation strategy.

IF 3.5 Q3 ENGINEERING, ENVIRONMENTAL
Environmental science. Advances Pub Date : 2024-01-18
Khaled Hashad, Jonathan T Steffens, Richard W Baldauf, David K Heist, Parikshit Deshmukh, K Max Zhang
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Abstract

Communities located in near-road environments experience elevated levels of traffic-related air pollution. Near-road air pollution is a major public health concern, and an environmental justice issue. Roadside green infrastructure such as trees, hedges, and bushes may help reduce pollution levels through enhanced deposition and mixing. Gaussian-based dispersion models are widely used by policymakers to evaluate mitigation strategies and develop regulatory actions. However, vegetation barriers are not included in those models, hindering air quality improvement at the community level. The main modeling challenge is the complexity of the deposition and mixing process within and downwind of the vegetation barrier. We propose a novel multi-regime Gaussian-based model that describes the parameters of the standard Gaussian equations in each regime to account for the physical mechanisms by which the vegetation barrier deposits and disperses pollutants. The four regimes include vegetation, a downwind wake, a transition, and a recovery zone. For each regime, we fit the relevant Gaussian plume equation parameters as a function of the vegetation properties and the local wind speed. Furthermore, the model captures particle deposition, a major factor in pollutant reduction by vegetation barriers. We parameterized the multi-regime model using data generated from a fields-validated computational fluid dynamics (CFD) model, covering a wide range of vegetation properties and meteorological conditions. The proposed multi-regime Gaussian-based model was evaluated across 9 particle sizes and a tracer gas to assess its capability of capturing dispersion and deposition. The multi-regime model's normalized mean error (NME) ranged between 0.18 and 0.3, the fractional bias (FB) ranged between -0.12 and 0.09, and R 2 value ranged from 0.47 to 0.75 across all particle sizes and the tracer gas for ground level concentrations, which are within acceptable ranges for air quality dispersion modeling. Even though the multi-regime model is parameterized for coniferous trees, our sensitivity study indicates that it can provide useful predictions for hedges/bushes vegetative barriers as well.

解决路边植被屏障作为近路空气污染缓解战略的效果问题。
位于近道路环境中的社区,与交通相关的空气污染水平较高。近路空气污染是一个主要的公共健康问题,也是一个环境正义问题。路边的绿色基础设施,如树木、树篱和灌木丛,可以通过增强沉积和混合来帮助降低污染水平。政策制定者广泛使用基于高斯的扩散模型来评估减缓策略和制定监管措施。然而,这些模型中并不包括植被屏障,从而阻碍了社区层面的空气质量改善。建模面临的主要挑战是植被屏障内部和下风向沉积和混合过程的复杂性。我们提出了一种基于高斯的新型多态模型,该模型描述了标准高斯方程在各态中的参数,以解释植被屏障沉积和扩散污染物的物理机制。四种状态包括植被、下风口、过渡区和恢复区。对于每种状态,我们都将相关的高斯羽流方程参数作为植被特性和当地风速的函数进行拟合。此外,该模型还捕捉到了颗粒沉积,这是植被屏障减少污染物的一个主要因素。我们利用经过实地验证的计算流体动力学(CFD)模型生成的数据对多时段模型进行了参数化,涵盖了广泛的植被特性和气象条件。我们对所提出的基于高斯的多时态模型进行了评估,涉及 9 种粒径和一种示踪气体,以评估其捕捉弥散和沉积的能力。在所有粒径和示踪气体的地面浓度方面,多时间模型的归一化平均误差(NME)介于 0.18 和 0.3 之间,分数偏差(FB)介于 -0.12 和 0.09 之间,R 2 值介于 0.47 和 0.75 之间,均在空气质量扩散模型的可接受范围内。尽管多工况模型是针对针叶树进行参数设置的,但我们的敏感性研究表明,它也可以为树篱/灌木丛植被屏障提供有用的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.90
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0.00%
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