研究目的
To construct global and robust NIR calibration models based on hybrid calibration sets composed of both primary and secondary spectra to address the issue of spectral inconsistencies between instruments.
研究成果
The study successfully constructed global and robust NIR calibration models based on hybrid calibration sets, which accurately predicted both primary and secondary samples when the ratio of primary to secondary spectra was less than 22. The method for selecting secondary samples did not significantly affect model performance, suggesting the Kennard–Stone method for its simplicity.
研究不足
The study acknowledges that the quality and state of samples change with time, making it difficult to use them as standards for long periods. Additionally, it was challenging to simultaneously measure spectra on primary and secondary instruments.
1:Experimental Design and Method Selection:
The study used PLS regression to build calibration models based on hybrid calibration sets composed of primary and secondary spectra.
2:Sample Selection and Data Sources:
Three datasets were used: radix scutellaria samples, corn samples, and tobacco samples, each measured on different NIR spectrometers.
3:List of Experimental Equipment and Materials:
AntarisTM II FT-NIR Analyzer, AntarisTM I FT-NIR Analyzer, and other spectrometers for corn and tobacco samples.
4:Experimental Procedures and Operational Workflow:
Samples were prepared and measured on the spectrometers, and spectra were pretreated using standard normal variate transformation plus first derivative.
5:Data Analysis Methods:
PLS regression was applied, and model performance was evaluated using mean relative error, root mean square error of prediction, and correlation coefficient.
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