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(00292)Multivariate Analysis of Large μ-FTIR Data Sets in Search of Microplastics

机译:(00292)对微塑料的大型μ-FTIR数据集的多变量分析

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μ-FTIR spectroscopy is a widely used technique in microplastics research. It allows to simultaneously characterize the material of the small particles, fibers or fragments, and to specify their size distribution and shape. Modern detectors offer the possibility to perform two-dimensional imaging of the sample providing detailed information. However, data sets are often too large for manual evaluation calling for automated microplastic identification. Library search based on the comparison with known reference spectra has been proposed to solve this problem. To supplement this 'targeted analysis', an exploratory ap-proach was tested. Principal component analysis (PCA)was used to drastically reduce the size of the data set while maintaining the significant information. Groups of similar spectra in the prepared data set were identified with cluster analysis. Members of different clusters could be assigned to different polymer types whereas the variation observed within a cluster gives a hint on the chemical variability of microplastics of the same type. Spectra labeled according to the respective cluster can be used for supervised learning. The obtained classification was tested on an independent data set and results were compared to the spectral library search approach.
机译:μ-FTIR光谱是微薄的微薄研究中的广泛使用技术。它允许同时表征小颗粒,纤维或片段的材料,并指定它们的尺寸分布和形状。现代探测器提供了执行提供详细信息的样本的二维成像的可能性。但是,数据集通常太大,对于手动评估呼叫自动微塑识别。已经提出了基于与已知参考光谱的比较的库搜索来解决这个问题。为了补充这种“目标分析”,测试了一个探索性AP-Proach。主要成分分析(PCA)用于大大减小数据集的大小,同时保持重要信息。使用聚类分析识别准备数据集中的类似光谱的组。不同簇的成员可以分配给不同的聚合物类型,而在簇内观察到的变化会提示与相同类型的微塑料的化学变化。根据各个群集标记的光谱可用于监督学习。获得的分类在独立的数据集上进行了测试,并将结果与​​光谱库搜索方法进行比较。

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