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Constructing a data-driven receptor model for organic and inorganic aerosol - a synthesis analysis of eight mass spectrometric data sets from a boreal forest site

机译:构建有机和无机气溶胶的数据驱动受体模型 - 从北方森林现场八种质谱数据集的合成分析

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摘要

The interactions between organic and inorganic aerosol chemical components are integral to understanding and modelling climate and health-relevant aerosol physicochemical properties, such as volatility, hygroscopicity, light scattering and toxicity. This study presents a synthesis analysis for eight data sets, of non-refractory aerosol composition, measured at a boreal forest site. The measurements, performed with an aerosol mass spectrometer, cover in total around 9 months over the course of 3 years. In our statistical analysis, we use the complete organic and inorganic unit-resolution mass spectra, as opposed to the more common approach of only including the organic fraction. The analysis is based on iterative, combined use of (1) data reduction, (2) classification and (3) scaling tools, producing a data-driven chemical mass balance type of model capable of describing site-specific aerosol composition. The receptor model we constructed was able to explain 83±8% of variation in data, which increased to 96±3% when signals from low signal-to-noise variables were not considered. The resulting interpretation of an extensive set of aerosol mass spectrometric data infers seven distinct aerosol chemical components for a rural boreal forest site: ammonium sulfate (35±7% of mass), low and semi-volatile oxidised organic aerosols (27±8% and 12±7 %), biomass burning organic aerosol (11±7 %), a nitrate-containing organic aerosol type (7±2 %), ammonium nitrate (5±2 %), and hydrocarbon-like organic aerosol (3±1 %). Some of the additionally observed, rare outlier aerosol types likely emerge due to surface ionisation effects and likely represent amine compounds from an unknown source and alkaline metals from emissions of a nearby district heating plant. Compared to traditional, ionbalance- based inorganics apportionment schemes for aerosol mass spectrometer data, our statistics-based method provides an improved, more robust approach, yielding readily useful information for
机译:有机和无机气溶胶化学成分之间的相互作用是理解和建模气候和健康相关气溶胶物理化学性质的一体化,例如挥发性,吸湿性,光散射和毒性。该研究呈现了在北部森林现场测量的八种数据集的合成分析,其八种数据集。用气溶胶质谱仪进行的测量,总共覆盖3年的9个月大约9个月。在我们的统计分析中,我们使用完整的有机和无机单元分辨率质谱,而不是仅包括有机级分的更常见的方法。该分析基于迭代,组合使用(1)数据减少,(2)分类和(3)缩放工具,产生能够描述特异性气溶胶组合物的数据驱动的化学质量平衡类型的模型。我们构建的受体模型能够解释83±8%的数据变化,当不考虑低信噪变量的信号时,增加到96±3%。由此产生的对大量气溶胶质谱数据的解释为农村博森特地区的七种不同的气溶胶化学成分:硫酸铵(质量的35±7%),低和半挥发性氧化有机气溶胶(27±8%) 12±7%),生物质燃烧有机气溶胶(11±7%),含硝酸盐的有机气溶胶型(7±2%),硝酸铵(5±2%)和烃类有机气溶胶(3±1 %)。一些另外观察到的罕见的异常因素气溶胶类型可能由于表面电离效应而出现,并且可能代表来自附近区域供热装置的排放的未知源和碱金属的胺化合物。与传统的基于Inonalance的无机分配方案进行了用于气溶胶质谱仪数据,我们的统计数据提供了一种改进的,更强大的方法,产生了易于有用的信息

著录项

  • 来源
    《Atmospheric chemistry and physics》 |2019年第1期|共28页
  • 作者单位

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Laboratory of Atmospheric Chemistry Paul Scherrer Institute Villigen Switzerland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

    Laboratory of Atmospheric Chemistry Paul Scherrer Institute Villigen Switzerland;

    Institute for Atmospheric and Earth System Research/Physics University of Helsinki Helsinki Finland;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大气科学(气象学);
  • 关键词

    Constructing a data-driven; receptor model; organic;

    机译:构建数据驱动;受体模型;有机;

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