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Measurement of lumber moisture content based on PCA and GSSVM 被引量:4

Measurement of lumber moisture content based on PCA and GS-SVM
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摘要 Lumber moisture content(LMC) is the important parameter to judge the dryness of lumber and the quality of wooden products.Nevertheless the data acquired are mostly redundant and incomplete because of the complexity of the course of drying,by interference factors that exist in the dryness environment and by the physical characteristics of the lumber itself.To improve the measuring accuracy and reliability of LMC,the optimal support vector machine(SVM) algorithm was put forward for regression analysis LMC.Environmental factors such as air temperature and relative humidity were considered,the data of which were extracted with the principle component analysis method.The regression and prediction of SVM was optimized based on the grid search(GS) technique.Groups of data were sampled and analyzed,and simulation comparison of forecasting performance shows that the main component data were extracted to speed up the convergence rate of the optimum algorithm.The GS-SVM shows a better performance in solving the LMC measuring and forecasting problem. Lumber moisture content(LMC) is the important parameter to judge the dryness of lumber and the quality of wooden products.Nevertheless the data acquired are mostly redundant and incomplete because of the complexity of the course of drying,by interference factors that exist in the dryness environment and by the physical characteristics of the lumber itself.To improve the measuring accuracy and reliability of LMC,the optimal support vector machine(SVM) algorithm was put forward for regression analysis LMC.Environmental factors such as air temperature and relative humidity were considered,the data of which were extracted with the principle component analysis method.The regression and prediction of SVM was optimized based on the grid search(GS) technique.Groups of data were sampled and analyzed,and simulation comparison of forecasting performance shows that the main component data were extracted to speed up the convergence rate of the optimum algorithm.The GS-SVM shows a better performance in solving the LMC measuring and forecasting problem.
出处 《Journal of Forestry Research》 SCIE CAS CSCD 2018年第2期547-554,共8页 林业研究(英文版)
基金 supported by the Natural Science Foundation of China(Grant No.31470715),(Grant No.31470714) the Fundamental Research Funds for the Central Universities(2572016EBT1)
关键词 Lumber moisture content(LMC) Principle component analysis(PCA) Grid search(GS) Support vector machine(SVM) Lumber moisture content(LMC) Principle component analysis(PCA) Grid search(GS) Support vector machine(SVM)
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