偏最小二乘回归
分析物
主成分分析
校准
成分分析
拉曼光谱
均方误差
最小二乘函数近似
主成分回归
基质(化学分析)
统计
数学
组分(热力学)
计算机科学
生物系统
化学
色谱法
光学
物理
热力学
生物
估计员
摘要
We propose an augmented classical least squares (ACLS) calibration method for quantitative Raman spectral analysis against component information loss. The Raman spectral signals with low analyte concentration correlations were selected and used as the substitutes for unknown quantitative component information during the CLS calibration procedure. The number of selected signals was determined by using the leave‐one‐out root‐mean‐square error of cross‐validation (RMSECV) curve. An ACLS model was built based on the augmented concentration matrix and the reference spectral signal matrix. The proposed method was compared with partial least squares (PLS) and principal component regression (PCR) using one example: a data set recorded from an experiment of analyte concentration determination using Raman spectroscopy. A 2‐fold cross‐validation with Venetian blinds strategy was exploited to evaluate the predictive power of the proposed method. The one‐way variance analysis (ANOVA) was used to access the predictive power difference between the proposed method and existing methods. Results indicated that the proposed method is effective at increasing the robust predictive power of traditional CLS model against component information loss and its predictive power is comparable to that of PLS or PCR.
科研通智能强力驱动
Strongly Powered by AbleSci AI