首页 | 本学科首页   官方微博 | 高级检索  
     

基于不同算法的道路混凝土干缩神经网络预测
引用本文:周胜波,申爱琴,张远,万晨光,赵洪基.基于不同算法的道路混凝土干缩神经网络预测[J].建筑材料学报,2014,17(3):414-420.
作者姓名:周胜波  申爱琴  张远  万晨光  赵洪基
作者单位:长安大学公路学院,陕西西安710064;长安大学公路学院,陕西西安710064;长安大学公路学院,陕西西安710064;长安大学公路学院,陕西西安710064;长安大学公路学院,陕西西安710064
基金项目:国家自然科学基金资助项目(51278059);中央高校基本科研业务费专项资金项目(2013G5210010,2013G2313001)
摘    要:针对多种因素下道路混凝土干缩预测模型难以建立的难题,基于BP神经网络理论建立了干缩预测模型.结果表明:BP神经网络预测道路混凝土干缩可获得较高准确度,且具有良好的泛化能力,在5种算法中,Trainlm训练速度快,但误差大,Traingda函数训练速度居中,误差最小,用其训练的神经网络可很好映射道路混凝土配合比与干缩率之间的非线性关系.

关 键 词:道路混凝土    干缩预测    神经网络    原料配合比
收稿时间:2013/3/30 0:00:00
修稿时间:2013/7/17 0:00:00

Shrinkage Prediction of Pavement Cement Concrete Based onDifferent Algorithms Neural Network
ZHOU Shengbo,SHEN Aiqin,ZHANG Yuan,WAN Chenguang and ZHAO Hongji.Shrinkage Prediction of Pavement Cement Concrete Based onDifferent Algorithms Neural Network[J].Journal of Building Materials,2014,17(3):414-420.
Authors:ZHOU Shengbo  SHEN Aiqin  ZHANG Yuan  WAN Chenguang and ZHAO Hongji
Abstract:The mathematical prediction model for shrinkage of pavement cement concrete under multi factors is difficult to establish. Therefore, the BP neural network model was developed to predict shrinkage of concrete. Results show that BP neural network can accurately predict the shrinkage of concrete and the model has good ability to generalize. By comparing five different algorithms, the Trainlm algorithm is quick to be trained but has big error, whereas the Traingda algorithm can be trained not as quick as Trainlm but has the minimum error. Hence, the neural network model by applying Traingda algorithm can well reflect the nonlinear relationship between materials mix proportion and the dry shrinkage ratio of pavement cement concrete.
Keywords:pavement cement concrete  dry shrinkage prediction  neural network  material mix proportion
点击此处可从《建筑材料学报》浏览原始摘要信息
点击此处可从《建筑材料学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号