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An improved algorithm for estimating pure component spectra in exploratory chemometric studies based on entropy minimization

机译:基于熵最小化的探索性化学计量学研究中纯组分光谱估计的改进算法

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It is assumed that multiple spectroscopic measurements are made on a sequence of solutions containing unknown components. Further, it is assumed that a singular value decomposition of the spectral data set is performed whereby the right singular vectors associated with the pure component spectra (absorptivities) are obtained. Sasaki et al. [ Applied Optics, 1983, 1984] have shown that a set of estimated absorptivities can be obtained by solving a minimization problem involving a set of spectroscopic basic vectors - without relying on any further information. The resulting estimated absorptivities often closely resemble the true absorptivities. The objective function then proposed involves second order derivatives, i.e., a classical entropy functional. In the present contribution, the use of higher order derivatives is investigated, viz., fourth order derivatives, in the objective function. Synthetic infrared spectroscopic data are constructed for two-component solutions, and sets of right singular vectors are obtained by singular value decomposition. It is shown that for spectra composed of strongly overlapping spectroscopic features, the fourth derivative objective function provides considerable improvement over the second derivative objective function for the estimation of absorptivities. It is also shown that for spectra composed of mildly overlapping spectroscopic features, the fourth derivative algorithm and the second derivative algorithm produce estimated absorptivities which are, for most practical purposes, identical to the real absorptivities. Strongly overlapping spectroscopic features are common to most sets of NIR, UV and XPS spectra, and IR and NMR data collected over a very limited spectral range. (C) 1998 Elsevier Science B.V. [References: 16]
机译:假设对包含未知组分的一系列溶液进行了多次光谱测量。此外,假设执行光谱数据集的奇异值分解,从而获得与纯组分光谱(吸收率)相关的右奇异矢量。 Sasaki等。 [Applied Optics,1983,1984]已经表明,可以通过解决涉及一组光谱基本矢量的最小化问题而获得一组估计的吸收率,而无需依赖任何进一步的信息。所得的估计吸收率通常与真实吸收率非常相似。然后提出的目标函数涉及二阶导数,即经典熵函数。在本贡献中,研究了目标函数中高阶导数(即四阶导数)的使用。针对两组分溶液构造了合成的红外光谱数据,并通过奇异值分解获得了一组右奇异矢量。结果表明,对于由强重叠光谱特征组成的光谱,四阶导数目标函数相对于二阶导数目标函数在吸收率的估计上有相当大的改进。还显示出,对于由轻度重叠的光谱特征组成的光谱,四阶导数算法和二阶导数算法产生估计的吸收率,对于大多数实际目的,该吸收率与真实的吸收率相同。大多数NIR,UV和XPS光谱以及在非常有限的光谱范围内收集到的IR和NMR数据都具有很强的重叠光谱特征。 (C)1998 Elsevier Science B.V. [参考:16]

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