Hu Yun, Li Boyan, Sato Harumi, Noda Isao, Ozaki Yukihiro
Department of Chemistry, School of Science and Technology, and Research Center for Environmental Friendly Polymers, Kwansei-Gakuin University, Gakuen, Sanda 669-1337, Japan.
J Phys Chem A. 2006 Oct 5;110(39):11279-90. doi: 10.1021/jp062492t.
A method based on noise perturbation in functional principal component analysis (NPFPCA) is for the first time introduced to overcome the noise interference problem in two-dimensional correlation spectroscopy (2D-COS). By the systematic addition of synthetic noise to the dynamic multivariate spectral data, the functional principal component analysis (FPCA) described in this report is able to accurately determine which eigenvectors are representing significant signals instead of noise in the original data. This feature is especially useful for the data reconstruction and noise filtering. Reconstructed data resulted from the smooth eigenvectors can produce much more reliable 2D correlation spectra by removing the correlation artifacts from noise, which in turn enable more accurate interpretation of the spectral variations. The usefulness of this method is demonstrated with a theoretical framework and applications to the 2D correlation analyses of both simulated data and temperature-dependent reflection-absorption infrared spectra of a poly(3-hydroxybutyrate) (PHB) thin film.
首次引入一种基于功能主成分分析中噪声扰动的方法(NPFPCA),以克服二维相关光谱(2D-COS)中的噪声干扰问题。通过向动态多变量光谱数据系统地添加合成噪声,本报告中描述的功能主成分分析(FPCA)能够准确确定哪些特征向量代表原始数据中的显著信号而非噪声。此特性对于数据重建和噪声滤波特别有用。由平滑特征向量得到的重建数据通过去除噪声中的相关伪影可以产生更可靠的二维相关光谱,这反过来又能更准确地解释光谱变化。通过一个理论框架以及在模拟数据和聚(3-羟基丁酸酯)(PHB)薄膜的温度相关反射吸收红外光谱的二维相关分析中的应用,证明了该方法的有效性。