摘要
通过紫外光引发接枝丙烯酸对亚麻织物进行改性处理。应用BP神经网络法和最小二乘回归法分别对不同光照接枝时间、光引发剂用量、单体浓度下的织物接枝率与透气率变化量之间关系进行建模。将接枝率作为输入、透气率变化量作为输出,通过讨论确定神经网络结构为1-10-1,S型函数作为激活函数;同时确定最优网络参数即迭代次数为100、训练目标为0.001。研究结果表明,BP网络模型与最小二乘模型相比,仿真输出与目标输出相关系数高,误差百分比小。BP神经网络模具有更好的仿真精度,为接枝率和透气率间关系的探索提供了一种准确有效的预测模型。
Modification of linen fabric is performed via UV initiated photografting of acrylic acid.BP neural network and least squares regression modeling methods are used to predict the relationship between grafting ratio and air permeability under different conditions such as photografting time,photoinitiator amount and concentration of acrylic acid.A three-layer BP network model with architecture of 1-10-1 is established after extensive discussion,including one node in one input layer representing the grafting ratio,one node in one output layer representing the variation of air permeability,and ten nodes in one hidden layer.The activation function of sigmoid is selected.The optimum parameters,training step of 100 and training goal of 0.001,are determined.The BP neural network model has higher correlation coefficient between simulated output and targeted output and lower percentage error than least squares regression model.BP neural network as such has higher simulation precision,and provides an effective predictive model for the relationship between graft ratio and air permeability.
出处
《纺织学报》
EI
CAS
CSCD
北大核心
2013年第1期90-95,共6页
Journal of Textile Research
基金
辽宁省教育厅优秀人才项目(LJQ2011055)
关键词
透气率
接枝率
数学模型
BP神经网络
最小二乘回归法
air permeability
grafting ratio
mathematical model
BP neural network
least squares regression method