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The application of chemometrics on Infrared and Raman spectra as a tool for the forensic analysis of paints.

机译:化学计量学在红外和拉曼光谱上的应用作为油漆法医分析的工具。

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摘要

The aim of this work is to evaluate the capabilities and limitations of chemometric methods and other mathematical treatments applied on spectroscopic data and more specifically on paint samples. The uniqueness of the spectroscopic data comes from the fact that they are multivariate - a few thousands variables - and highly correlated. Statistical methods are used to study and discriminate samples. A collection of 34 red paint samples was measured by Infrared and Raman spectroscopy. Data pretreatment and variable selection demonstrated that the use of Standard Normal Variate (SNV), together with removal of the noisy variables by a selection of the wavelengths from 650 to 1830 cm(-1) and 2730-3600 cm(-1), provided the optimal results for infrared analysis. Principal component analysis (PCA) and hierarchical clusters analysis (HCA) were then used as exploratory techniques to provide evidence of structure in the data, cluster, or detect outliers. With the FTIR spectra, the Principal Components (PCs) correspond to binder types and the presence/absence of calcium carbonate. 83% of the total variance is explained by the four first PCs. As for the Raman spectra, we observe six different clusters corresponding to the different pigment compositions when plotting the first two PCs, which account for 37% and 20% respectively of the total variance. In conclusion, the use of chemometrics for the forensic analysis of paints provides a valuable tool for objective decision-making, a reduction of the possible classification errors, and a better efficiency, having robust results with time saving data treatments.
机译:这项工作的目的是评估化学计量学方法和应用于光谱数据,更具体地应用于油漆样品的其他数学处理方法的能力和局限性。光谱数据的独特性来自于它们是多变量(几千个变量)并且高度相关的事实。统计方法用于研究和区分样本。通过红外和拉曼光谱法测量了34个红色涂料样品的集合。数据预处理和变量选择表明,使用标准正态变异系数(SNV),以及通过选择650至1830 cm(-1)和2730-3600 cm(-1)的波长来消除噪声变量,红外分析的最佳结果。然后,将主成分分析(PCA)和层次聚类分析(HCA)用作探索性技术,以提供数据,聚类或检测异常值中结构的证据。利用FTIR光谱,主成分(PC)对应于粘合剂类型和碳酸钙的存在与否。前四台PC解释了总方差的83%。至于拉曼光谱,在绘制前两个PC时,我们观察到六个不同的簇,分别对应于不同的颜料成分,分别占总方差的37%和20%。总之,将化学计量学用于油漆的取证分析为客观决策,减少可能的分类错误和提高效率提供了一种有价值的工具,具有可靠的结果,并且节省了数据处理时间。

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