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Performance Prediction of Carbon Fiber Protofilament Based on SAGA-SVR 被引量:1

Performance Prediction of Carbon Fiber Protofilament Based on SAGA-SVR
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摘要 The existing optimized performance prediction of carbon fiber protofilament process model is still unable to meet the production needs. A way of performance prediction on carbon fiber protofilament was presented based on support vector regression( SVR) which was optimized by an optimization algorithm combining simulated annealing algorithm and genetic algorithm( SAGA-SVR). To verify the accuracy of the model,the carbon fiber protofilament production test data were analyzed and compared with BP neural network( BPNN). The results show that SAGA-SVR can predict the performance parameters of the carbon fiber protofilament accurately. The existing optimized performance prediction of carbon fiber protofilament process model is still unable to meet the production needs. A way of performance prediction on carbon fiber protofilament was presented based on support vector regression (SVR) which was optimized by an optimization algorithm combining simulated annealing algorithm and genetic algorithm (SAGA-SVR). To verify the accuracy of the model, the carbon fiber protofilament production test data were analyzed and compared with BP neural network (BPNN). The results show that SAGA-SVR can predict the performance parameters of the carbon fiber protofilament accurately.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2014年第2期92-97,共6页 东华大学学报(英文版)
基金 the Key Project of National Natural Science Foundation of China(No.61134009) Program for Changjiang Scholars and Innovation Research Team in University from the Ministry of Education,China(No.IRT1220) Specialized Research Fund for Shanghai Leading Talents,Project of the Shanghai Committee of Science and Technology,China(No.13JC1407500) the Fundamental Research Funds for the Central Universities,China(No.2232012A3-04)
关键词 support vector regression(SVR) machine genetic algorithm(GA) simulated annealing algorithm(SA) carbon fiber performance prediction support vector regression (SVR) machine genetic algorithm( GA ) simulated annealing algorithm ( SA ) carbon fiber perforrmance prediction
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