Title
Application of least squares support vector machines for discrimination of red wine using visible and near infrared spectroscopy
Abstract
Visible and near infrared (Vis/NIR) transmittance spectroscopy and chemometrics methods were utilized to discriminate red wine. The samples of five varieties of red wine were separated into calibration set and validation set randomly. The principal components (PCs) could be obtained from original spectrum by using Partial least squares (PLS), The PCs (selected by PLS) of each sample in calibration set was used as the inputs to train the Least squares support vector machines (LS-SVM) model, then the optimal model was used to predict the varieties of samples in validation set based on their PCs, and 94% recognition ratio was achieved with the threshold predictive error ±0.1, while 100% recognition ration with the threshold predictive error ±0.2. Root mean square error of prediction (RMSEP) and determination coefficient (r2) were 0.0531 and 0.9986 respectively. It is indicated that Vis/NIR transmittance spectroscopy combined with PLS and LS-SVM is an efficient measurement to discriminate types of red wine.
Year
DOI
Venue
2008
10.1109/ISKE.2008.4731076
Intelligent System and Knowledge Engineering, 2008. ISKE 2008. 3rd International Conference
Keywords
DocType
Volume
red wine discrimination,near infrared spectroscopy,visible infrared spectroscopy,production engineering computing,pattern classification,least squares support vector machines,root mean square error,principal components,infrared spectroscopy,partial least squares,beverages,support vector machines,predictive models,prediction error,kernel,near infrared,calibration,principal component,spectrum,least squares support vector machine,computational modeling,spectroscopy
Conference
1
Issue
ISSN
ISBN
null
null
978-1-4244-2197-8
Citations 
PageRank 
References 
0
0.34
1
Authors
3
Name
Order
Citations
PageRank
Fei Liu1206.06
Li Wang241.68
Yong He37812.64