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Outlier detection in UV/Vis spectrophotometric data

机译:UV / Vis分光光度数据中的异常值检测

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UV/Vis spectrophotometers have been used to monitor water quality since the early 2000s. Calibration of these devices requires sampling campaigns to elaborate relations between recorded spectra and measured concentrations. In order to build robust calibration data sets, several spectra must be recorded per sample. This study compares two approaches - principal component analysis and data depth theory - to identify outliers and select the most representative spectrum (MRS) among the repetitively recorded spectra. Detection of samples that contain outliers is consistent between the methods in more than 70% of the samples. Identification of spectra as outliers is consistent in more than 95% of the cases. The identification of MRS differs depending on the approach used. In their current form, both of the proposed approaches can be used for outlier detection and identification. Further studies are suggested to combine the methods and develop an automated ranking and sorting system.
机译:自2000年代初以来,UV / Vis分光光度计已用于监测水质。这些设备的校准需要进行采样活动,以详细说明记录的光谱和测得的浓度之间的关系。为了建立可靠的校准数据集,每个样品必须记录几个光谱。本研究比较了两种方法-主成分分析和数据深度理论-识别异常值并在重复记录的光谱中选择最具代表性的光谱(MRS)。在70%以上的样本中,方法之间对包含异常值的样本的检测是一致的。在超过95%的情况下,将光谱识别为异常值是一致的。 MRS的标识取决于所使用的方法。以它们的当前形式,两种提议的方法都可以用于离群值检测和识别。建议进行进一步的研究以结合这些方法并开发一个自动的排序和分类系统。

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