Analysis of the Mixing Degree and Main Chemical Composition of Eucalyptus Urophylla×Grandis and Acacia Mangium Pulping Materials by Near infrared Spectroscopy Combined with 4 Algorithms
  
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KeyWord:near-infrared spectroscopy  LASSO algorithm  mixed pulpwood  pulping and papermaking  component content
  
AuthorInstitution
WU Ting,LIANG Long,ZHU Bei-ping,DENG Yong-jun,FANG Gui-gan 1.Key Laboratory of Biomass Energy and Material;Key Laboratory of Chemical Engineering of Forest Products,National Forestry and Grassland Administration;National Engineering Laboratory for Biomass Chemical Utilization;Institute of Chemical Industry of Forest Products,Chinese Academy of Forestry;2.Gold East Paper Jiangsu Co.,Ltd.
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Abstract:
      In order to alleviate the pressure of wood pulp supply in China and meet the actual demand of pulping with mixed pulpwood,a study was conducted on near infrared rapid analysis of mixed pulpwood.145 mixed samples of Eucalyptus urophylla× grandis-Acacia mangium were prepared,in which the content of Eucalyptus urophylla×grandis was manually controlled.The near infrared spectra of these samples were collected,and the contents of holocellulose,pentosan and Klason lignin were analyzed by traditional methods.After the original spectra were pretreated by first derivative and standard normal variate,the analysis models for contents of Eucalyptus urophylla×grandis,holocellulose,pentosan and Klason lignin were established by partial least squares method,support vector machine method,artificial neural network method and LASSO algorithm,respectively.Among them,models for contents of Eucalyptus urophylla×grandis and holocellulose established by LASSO algorithm were the best,with their root mean square error of prediction(RMSEP) values of 1.80% and 0.60%,and their absolute deviation(AD) ranges of -3.03%-3.17% and -1.03%-0.98%,respectively,which could be used for accurate and rapid analysis.Besides,the model for content of pentosan established by partial least squares was the best,with its RMSEP value of 0.75% and an absolute deviation range of -1.26%-1.33%,while the model for content of Klason lignin established by the support vector machine method was the best,with its RMSEP value of 0.48% and an absolute deviation range of -0.82%-0.86%.The performance of the two models was suitable for inaccurate analysis.This study provides the possibility for rapid analysis of mixed pulpwood,and also confirms the applicability of LASSO algorithm.
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