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Blended coal’s property prediction model based on PCA and SVM

Blended coal’s property prediction model based on PCA and SVM
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摘要 In order to predict blended coal's property accurately, a new kind of hybrid prediction model based on principal component analysis (PCA) and support vector machine (SVM) was established. PCA was used to transform the high-dimensional and correlative influencing factors data to low-dimensional principal component subspace. Well-trained SVM was used to extract influencing factors as input to predict blended coal's property. Then experiments were made by using the real data, and the results were compared with weighted averaging method (WAM) and BP neural network. The results show that PCA-SVM has higher prediction accuracy in the condition of few data, thus the hybrid model is of great use in the domain of power coal blending. In order to predict blended coal’s property accurately, a new kind of hybrid prediction model based on principal component analysis (PCA) and support vector machine (SVM) was established. PCA was used to transform the high-dimensional and correlative influencing factors data to low-dimensional principal component subspace. Well-trained SVM was used to extract influencing factors as input to predict blended coal’s property. Then experiments were made by using the real data, and the results were compared with weighted averaging method (WAM) and BP neural network. The results show that PCA-SVM has higher prediction accuracy in the condition of few data, thus the hybrid model is of great use in the domain of power coal blending.
出处 《Journal of Central South University》 SCIE EI CAS 2008年第S2期331-335,共5页 中南大学学报(英文版)
基金 Project(50579101) supported by the National Natural Science Foundation of China
关键词 prediction model BLENDED coal’s PROPERTY support VECTOR MACHINE principal COMPONENT analysis prediction model blended coal’s property support vector machine principal component analysis
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