首页 | 官方网站   微博 | 高级检索  
     

小波神经网络在基坑变形预测的研究与应用
引用本文:王博,商岸帆,郭晨,罗超,罗文浪.小波神经网络在基坑变形预测的研究与应用[J].计算机工程与应用,2012,48(19):225-229.
作者姓名:王博  商岸帆  郭晨  罗超  罗文浪
作者单位:1. 井冈山大学电子与信息工程学院,江西吉安,343009
2. 中国水电顾问集团西北勘测设计研究院,西安,710065
3. 井冈山大学现代教育技术中心,江西吉安,343009
基金项目:国家自然科学基金,江西省教育厅科技计划项目,江西省高等学校重点学科项目
摘    要:针对一般小波神经网络存在的学习时间长,网络预测精度低的问题,提出了对网络输入层权值初始值进行归一化处理的优化方法,改进了原有小波神经网络。将改进后的模型应用于某市轨道交通1号线珠江路站深基坑水平变形预测中。监测结果表明,网络输出值与实测值吻合很好,优化后的小波神经网络收敛速度也更快;同时随着大量最新的监测数据输入到网络中学习,将使深基坑水平变形预测更加精确。

关 键 词:基坑变形  工程安全  预测研究  小波神经网络  参数优化

Research and application on prediction deformation of foundation pit based on wavelet neural network
WANG Bo , SHANG Anfan , GUO Chen , LUO Chao , LUO Wenlang.Research and application on prediction deformation of foundation pit based on wavelet neural network[J].Computer Engineering and Applications,2012,48(19):225-229.
Authors:WANG Bo  SHANG Anfan  GUO Chen  LUO Chao  LUO Wenlang
Affiliation:1.School of Information Science and Communication,Jinggangshan University,Ji’an,Jiangxi 343009,China 2.Hydro China Xibei Engineering Corporation,Xi’an 710065,China 3.Modern Education Technology Center,Jinggangshan University,Ji’an,Jiangxi 343009,China
Abstract:In order to solve the ubiquitous problems on cable-stayed bridge’s loading test which are expensive cost and long testing time,this paper builds a practical cable-stayed bridge’s finite element model,analyzes the mechanics characteristics of cable-stayed bridge,and puts forward a method of loading test conditions’merging.Finally,Dezhou bridge’s loading tests are finished with the merging method.The research results show that for cable-stayed bridges,beam maximum moment condition and beam maximum deflection condition can combine into one condition;and tower maximum moment condition and top tower horizontal displacement can combine into one condition.The merging method can be applied to practical bridge’s loading test and can popularize to other long-span bridge type’s loading test.In summery,the research result has a wide application prospect.
Keywords:pit deformation  engineering safe  predict research  wavelet neural network  parameter optimization
本文献已被 CNKI 维普 万方数据 等数据库收录!
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-23

京公网安备 11010802026262号