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基于人工神经网络的柔性机翼挠度预测
引用本文:王志飞,王华,贾青萍,韩晶.基于人工神经网络的柔性机翼挠度预测[J].北京航空航天大学学报,2011,37(4):405-408,414.
作者姓名:王志飞  王华  贾青萍  韩晶
作者单位:北京航空航天大学 宇航学院, 北京 100191
摘    要:为实现对承载后柔性机翼挠度的准确预测,在全面分析柔性机翼挠度的影响因素基础上,应用正交试验法确定的影响柔性机翼挠度的主要因子作为输入变量,挠度作为输出变量,以大量试验数据为训练样本,通过多次试取隐含层和各隐含单元,并选取trainlm作为最优训练函数,最终建立了预测柔性机翼挠度的BP(Back Propagation)人工神经网络模型.在此基础上,随机选取试验结果中的12组试验样本,连续进行10次挠度预测,预测结果和试验实测值最大相对误差和标准方差分别为4.481%,1.033 7.解析结果表明:柔性机翼挠度预测结果与实验值吻合的较好,建立的人工神经网络预测模型具有较高的预测精度.

关 键 词:柔性机翼  BP神经网络  挠度预测
收稿时间:2010-01-14

Deflection prediction for inflatable wing based on artificial neural network
Wang Zhifei,Wang Hua,Jia Qinping,Han Jing.Deflection prediction for inflatable wing based on artificial neural network[J].Journal of Beijing University of Aeronautics and Astronautics,2011,37(4):405-408,414.
Authors:Wang Zhifei  Wang Hua  Jia Qinping  Han Jing
Institution:School of Astronautics, Beijing University of Aeronautics and Astronautics, Beijing 100191, China
Abstract:To accurately predict the deflection of loaded inflatable wing,a basic impact of influence deflection was analyzed,method of orthogonal experiment was used to ascertain the main impact of influence deflection.The main impact of influence deflection was used as intputs and deflection was used as outputs.A BP artificial network model was established by using plenty of experimental statistics as training specimens,trying to access all kinds of crytic layers and elements,choosing trainlm as optimal function.Ten...
Keywords:inflatable wing  BP neural network  deflection prediction  
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