空气质量模型中总沉降的颗粒干沉降成分:对、错还是不确定?

R. Saylor, B. Baker, Pius Lee, D. Tong, L. Pan, B. Hicks
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引用次数: 36

摘要

干沉降是大气颗粒物的一个重要损失过程,在临界负荷分析中可作为总沉降估算的重要组成部分。然而,在大规模空气质量和大气化学模型中用于预测颗粒沉积速度作为粒径函数的算法是高度不确定的。这些算法中的许多,虽然来源于一个共同的遗产,但即使在相同的环境条件下,对于主要的土地利用类别,对于给定的颗粒直径,预测的颗粒沉积速度也有很大的不同。更有问题的是,对于植被景观(特别是森林),算法与现有的测量结果不太一致。在这项工作中,我们进行了一项敏感性研究,以估计颗粒沉积算法中的不确定性在空气质量模型对地面细颗粒浓度、颗粒沉积和氮和硫的总沉积的预测中有多重要。我们的研究结果表明,根据颗粒沉积速度算法的选择,表面细颗粒浓度的预测可能会变化5-15%,而颗粒干沉积的影响程度要大得多,算法之间的差异大于200%。此外,如果在森林上的累积模式颗粒干沉积测量是正确的,那么这些景观的干颗粒沉积和总元素沉积可能比目前空气质量和大气化学模型典型模拟的要大得多,从而对通常可用的总沉积估计值及其在临界负荷分析中的应用提出质疑。由于大气颗粒浓度和沉积的准确预测对未来的空气质量、天气和气候模型以及对敏感生态系统的污染物沉积的管理至关重要,因此,投资新的干沉积测量与综合建模工作相结合,似乎不仅合理,而且对于推进和改进大气模型中颗粒干沉积过程的处理至关重要。
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The particle dry deposition component of total deposition from air quality models: right, wrong or uncertain?
Abstract Dry deposition is an important loss process for atmospheric particles and can be a significant part of total deposition estimates calculated for critical loads analyses. However, algorithms used in large-scale air quality and atmospheric chemistry models to predict particle deposition velocity as a function of particle size are highly uncertain. Many of these algorithms, although derived from a common heritage, predict vastly different particle deposition velocities for a given particle diameter even under identical environmental conditions for major land use classes. Even more problematic, for vegetated landscapes (forests, in particular) the algorithms do not agree very well with available measurements. In this work, we perform a sensitivity study to estimate how significant the uncertainties in particle deposition algorithms may be in an air quality model’s predictions of ground-level fine particle concentrations, particle deposition and overall total deposition of nitrogen and sulfur. Our results suggest that fine particle concentration predictions at the surface may vary by 5–15% depending on the choice of particle deposition velocity algorithm, while particle dry deposition is affected to a much greater extent with differences among algorithms >200%. Moreover, if accumulation mode particle dry deposition measurements over forests are correct, then dry particle deposition and total elemental deposition to these landscapes may be much larger than is typically simulated by current air quality and atmospheric chemistry models, calling into question commonly available estimates of total deposition and their use in critical loads analyses. Since accurate predictions of atmospheric particle concentrations and deposition are critically important for future air quality, weather and climate models and management of pollutant deposition to sensitive ecosystems, an investment in new dry deposition measurements in conjunction with integrated modelling efforts seems not only justified but vitally necessary to advance and improve the treatment of particle dry deposition processes in atmospheric models.
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