发明名称 Supervised principal component analysis
摘要 The invention provides a multivariate modeling method for quantitative analysis by supervised principal component analysis (SPCA). The method comprises: (a) designing a plurality of calibration samples wherein the desired variances are dominant or greatly enhanced; (b) producing a calibration data matrix using suitable mathematical pretreatment and truncation of the acquired NIR/Raman spectra of the calibration samples; (c) decomposing the matrix using PCA; (d) evaluating the score and loading matrices to ensure a genuine orthogonal relationship between scores of the desired latent variables in a two-dimensional principal component space 7; (e) generating a prediction matrix for quantitative prediction of unknown samples. This method does not require testing of calibration samples using a reference method. In addition, this method has high tolerance to variations in sample composition and manufacturing conditions.
申请公布号 US8359164(B2) 申请公布日期 2013.01.22
申请号 US201113037851 申请日期 2011.03.01
申请人 LI WEIYONG 发明人 LI WEIYONG
分类号 G06F19/10;G01N24/00 主分类号 G06F19/10
代理机构 代理人
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