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A robust clustering algorithm for analysis of composition-dependent organic aerosol thermal desorption measurements

机译:一种鲁棒聚类算法,用于分析组成依赖性有机气溶胶热解吸测量

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One of the challenges of understanding atmospheric organic aerosol (OA) particles stems from its complex composition. Mass spectrometry is commonly used to characterize the compositional variability of OA. Clustering of a mass spectral dataset helps identify components that exhibit similar behavior or have similar properties, facilitating understanding of sources and processes that govern compositional variability. Here, we developed an algorithm for clustering mass spectra, the noise-sorted scanning clustering (NSSC), appropriate for application to thermal desorption measurements of collected OA particles from the Filter Inlet for Gases and AEROsols coupled to a chemical ionization mass spectrometer (FIGAERO-CIMS). NSSC, which extends the common density-based special clustering of applications with noise (DBSCAN) algorithm, provides a robust, reproducible analysis of the FIGAERO temperature-dependent mass spectral data. The NSSC allows for the determination of thermal profiles for compositionally distinct clusters of mass spectra, increasing the accessibility and enhancing the interpretation of FIGAERO data. Applications of NSSC to several laboratory biogenic secondary organic aerosol (BSOA) systems demonstrate the ability of NSSC to distinguish different types of thermal behaviors for the components comprising the particles along with the relative mass contributions and chemical properties (e.g., average molecular formula) of each mass spectral cluster. For each of the systems examined, more than 80% of the total mass is clustered into 9–13 mass spectral clusters. Comparison of the average thermograms of the mass spectral clusters between systems indicates some commonality in terms of the thermal properties of different BSOA, although with some system-specific behavior. Application of NSSC to sets of experiments in which one experimental parameter, such as the concentration of NO, is varied demonstrates the potential for mass spectral clustering to elucidate the chemical factors that drive changes in the thermal properties of OA particles. Further quantitative interpretation of the thermograms of the mass spectral clusters will allow for a more comprehensive understanding of the thermochemical properties of OA particles.
机译:理解大气有机气溶胶(OA)颗粒的挑战之一源于其复杂的组合物。质谱通常用于表征OA的组成变异性。质谱数据集的聚类有助于识别表现出类似行为或具有相似性质的组件,促进对管理组成变异性的来源和过程的理解。在这里,我们开发了一种用于聚类质谱,噪声排序扫描聚类(NSSC)的算法,适合于从耦合到化学电离质谱仪的气体和气溶胶的过滤器入口的收集的OA颗粒的热解吸测量的热解吸测量(Figaero- CIMS)。 NSSC,其扩展了具有噪声(DBSCAN)算法的常见密度的特殊聚类,提供了对Figoero温度相关的质谱数据的稳健可再现分析。 NSSC允许确定用于组成不同的质谱簇的热分布,增加了可访问性并增强了Figoero数据的解释。 NSSC对几个实验室生物学二次有机气溶胶(BSO)系统的应用证明了NSSC区分不同类型的热行为的能力,所述组分包括颗粒以及各自的相对质量贡献和化学性质(例如,平均分子式)质谱簇。对于检查的每个系统,总质量的超过80%被聚集成9-13质量谱簇。在系统之间的质谱簇的平均热图的比较表明了不同BSO的热性质的一些共性,尽管具有一些特定于系统的行为。 NSSSSC的应用在其实验中,改变一种实验参数,例如NO的浓度,证明了质谱聚类的可能性,以阐明驱动OA颗粒的热性能变化的化学因素。对质谱簇的热分析器的进一步定量解释将允许更全面地了解OA颗粒的热化学性质。

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