文章摘要
主成分分析结合BP神经网络在橡胶材料磨耗性能预测中的应用
Application of Principal Component Analysis and BP Artificial Neural Network in Prediction of Abrasion Resistance of Rubber Materials
  
DOI:
中文关键词: 丁苯橡胶  神经网络  主成分分析  耐磨性能  灵敏度分析
英文关键词: SBR  neural network  principal component analysis  abrasion resistance  sensitivity analysis
基金项目:新世纪优秀人才支持计划项目(NCET-10-0202)
作者单位
项可璐 北京化工大学 北京市新型高分子材料制备与加工重点试验室 
罗金莲 北京化工大学 北京市新型高分子材料制备与加工重点试验室 
谢鹏 北京化工大学 北京市新型高分子材料制备与加工重点试验室 
吴友平 北京化工大学 北京市新型高分子材料制备与加工重点试验室 
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中文摘要:
      采用基于灵敏度分析的BP神经网络模型,将丁苯橡胶(SBR)复合材料的8种力学性能数据经过主成分分析(PCA)降维后作为神经网络的输入向量,耐磨性能数据作为输出向量,对SBR复合材料的耐磨性能进行预测,并计算各输入向量的灵敏度矩阵,从而分析输入量对耐磨性能的影响程度。结果表明:通过PCA降维处理,可以消除神经网络输入向量之间的共线性,简化网络,提高网络的预测性能;预测误差在允许范围内,说明BP网络适用于橡胶材料的耐磨性能预测;灵敏度分析显示定伸应力、拉断伸长率和拉断永久变形对SBR橡胶复合材料的耐磨性能影响最大。
英文摘要:
      A back propagation(BP) neural network model based on sensitivity analysis was established to predict abrasion of SBR composites.The data of eight kinds of mechanical properties of SBR composites were dimensionally reduced through principal component analysis(PCA),and the PCA data were utilized as the input vectors while abrasion as the output vector of the BP network.Meanwhile,the sensitivity matrix of the input vector was calculated in order to analyze the influence of mechanical properties on abrasion.The results demonstrated that the co-linearity between the network input vectors could be eliminated by PCA and the network was simplified at the same time.The prediction error was within the allowable range,indicating that the BP network was suitable for SBR abrasion prediction.Sensitivity analysis indicated that the abrasion resistance of SBR was remarkably influenced by modulus,elongation at break and permanent deformation at break.
Author NameAffiliation
XIANG Ke-lu Beijing University of Chemical Technology 
LUO Jin-lian Beijing University of Chemical Technology 
XIE Peng Beijing University of Chemical Technology 
WU You-ping Beijing University of Chemical Technology 
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