光谱学与光谱分析 |
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Study of Rapid Prediction of Wood Surface Glossiness by Near Infrared Spectroscopy |
LIU Ya-na, YANG Zhong*, Lü Bin, ZHANG Mao-mao, WANG Xing-hua |
Research Institute of Wood Industry,Chinese Academy of Forestry, Beijing 100091, China |
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Abstract Surface glossiness is one of the important visual appearance parameters of natural polymer material (wood) and its related products. To realize the fast measurement of natural polymer material surface glossiness is of great significance to the online quality control and assessment of its surface. In order to broaden the application of near infrared (NIR) spectroscopy in the field of polymer material surface quality control and realize the feasibility of NIR as a fast measurement of surface glossiness , the NIR combined with partial least squares(PLS) analysis were used to analyse the correlations of natural polymer material wood surface glossiness between the NIR predicted and lab measured, and then to investigate the feasibility of NIR to rapidly predict the surface glossiness of natural polymer material wood.The results showed that the wood NIR diffuse reflectance spectroscopy regularly varied with the different wood surface glossiness, from which we can concluded that the NIR spectrums reflected the information of wood surface glossiness. The correlation coefficients of surface glossiness between the PLS models predicted and lab measured were up to 0.90. Additionally, by changing the degree between the fiber and sample surface, we collected the different wood NIR spectrums, the accuracy of NIR surface glossiness models based on these NIR spectrums had not significantly improved, and models based on the NIR spectrums collected by the 90 degree between the fiber and sample surface performed better.
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Received: 2013-05-31
Accepted: 2013-09-07
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Corresponding Authors:
YANG Zhong
E-mail: zyang@caf.ac.cn
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