会议专题

Near-infrared determination of polyphenols using linear and nonlinear regression algorithms

  In the present study,the possibility of using fourier transform-near infrared spectroscopy(FT-NIR)to measure the concentration of polyphenols in Yunnan tobacco was investigated.Selected samples representing a wide range of varieties and regions were analyzed by high performance liquid chromatography(HPLC)for the concentrations of polyphenols in tobacco.Results showed that positive correlations existed between NIR spectra and concentration of objective compound upon the established linear and nonlinear regression models.The optimal model was obtained by comparing different modeling processes.It was demonstrated that the PLS regression covering the range of 5450-4250 cm-1 could lead to a good linear relationship between spectra and polyphenols with the R2 of 0.9170.Optimal model generated the RMSEP of 0.254,RSEP of 0.0554,and RPD of 3.47,revealing that the linear model was able to predict the content of polyphenols in tobacco.Support vector regression(SVR)preprocessed by SNV obtained the predictable results with the R2 of 0.8461,RMSEP of 0.374,and RPD of 2.36,which was inferior to PLS modeling.

Polyphenols Near-infrared spectroscopy Partial least square regression Nonlinear regression modeling

Yue Huang Guorong Du Yanjun Ma Jun Zhou

China Agricultural University,Beijing,100193,P. R. China;Beijing station,Department of Research and Beijing station,Department of Research and Development,Shanghai Tobacco Group Wansheng South Street

国内会议

中国烟草学会2016年学术年会

北京

英文

1-20

2016-11-01(万方平台首次上网日期,不代表论文的发表时间)