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Comparison of two cluster analysis methods using single particle mass spectra

机译:两种使用单颗粒质谱的聚类分析方法的比较

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Cluster analysis of aerosol time-of-flight mass spectrometry (ATOFMS) data has been an effective tool for the identification of possible sources of ambient aerosols. In this study, the clustering results of two typical methods, adaptive resonance theory-based neural networks-2a (ART-2a) and density-based clustering of application with noise (DBSCAN), on ATOFMS data were investigated by employing a set of benchmark ATOFMS data. The advantages and disadvantages of these two methods are discussed and some feasible remedies proposed for problems encountered in the clustering process. The results of this study will provide promising directions for future work on ambient aerosol cluster analysis, suggesting a more effective and feasible clustering strategy based on the integration of ART-2a and DBSCAN.
机译:气溶胶飞行时间质谱(ATOFMS)数据的聚类分析已成为识别环境气溶胶可能来源的有效工具。在这项研究中,通过使用一组基准,研究了两种典型方法的聚类结果:基于自适应共振理论的神经网络2a(ART-2a)和基于密度的带噪应用的聚类(DBSCAN)。 ATOFMS数据。讨论了这两种方法的优缺点,并针对聚类过程中遇到的问题提出了一些可行的补救措施。这项研究的结果将为今后的环境气溶胶聚类分析提供有希望的方向,并提出基于ART-2a和DBSCAN集成的更有效和可行的聚类策略。

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