Collin G White, Thomas M Hancewicz, Ayuba Fasasi, Junior Wright, Barry K Lavine
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引用次数: 0
摘要
使用拉曼光谱从成品汽油中的各个炼油流(如重整馏分和烷基馏分)中提取成分,以确定成品的化学成分。改良交替最小二乘法(MALS)用于将成品的拉曼光谱数据集分离成纯净的单个成分。与交替最小二乘法(ALS)相比,MALS 在多组分分辨方面的优势在本研究中得到了强调,本研究使用了三个拉曼光谱数据集,为比较这两种方法的性能提供了合适的基准。MALS 在精确度方面优于 ALS,比 ALS 能更好地分辨成分,而且对共线数据也更稳健。最后,由于反演协方差结构时的不稳定性会使数据中的噪声增大,因此 ALS 通常无法提取噪声水平附近的成分。然而,MALS 可以提取出这些相同的成分,这是因为最小二乘回归在矩阵反演时使用了修正的脊回归技术,从而使矩阵反演趋于稳定。
Alternating and Modified Alternating Least Squares Applied to Raman Spectra of Finished Gasolines.
Extraction of components from individual refinery streams (e.g., reformates and alkylates) in finished gasoline was undertaken using Raman spectroscopy to characterize the chemical content of the finished product. Modified alternating least squares (MALS) was used for separating Raman spectroscopic data sets of the finished product into its pure individual components. The advantages of MALS over alternating least squares (ALS) for multicomponent resolution are highlighted in this study using three Raman spectroscopic data sets which provide a suitable benchmark for comparing the performance of these two methods. MALS is superior to ALS in terms of accuracy and can better resolve components than ALS, and it is also more robust toward collinear data. Finally, components near the noise level usually cannot be extracted by ALS because of instability when inverting the covariance structure which inflates the noise present in the data. However, these same components can be extracted by MALS due to the stabilization of the least squares regression with respect to the matrix inversion using modified techniques from ridge regression.