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基于RBF的轴承钢变形抗力的预测
引用本文:熊渊,孟令启.基于RBF的轴承钢变形抗力的预测[J].钢铁研究学报,2011,23(2):48-48.
作者姓名:熊渊  孟令启
作者单位:郑州大学机械工程学院,河南郑州,450001
基金项目:国家自然科学基金资助项目
摘    要:以凸轮式高速形变试验机得到的试验数据为基础,利用Matlab人工神经网络工具箱,建立了轴承钢的变形抗力与其化学成分、变形温度、变形速率及变形程度对应关系的RBF神经网络预测模型.分析了变形温度和变形速率对轧制压力网络模型精度的影响.得出随着变形温度的增加,网络的预测误差逐渐增大;随着变形速率的增大,网络的预测误差逐渐减...

关 键 词:RBF  神经网络  变形抗力  预测
收稿时间:2009-05-14;

Prediction of Bearing Steel Deformation Resistance Based on RBF Neural Network
XIONG Yuan,MENG Ling-qi.Prediction of Bearing Steel Deformation Resistance Based on RBF Neural Network[J].Journal of Iron and Steel Research,2011,23(2):48-48.
Authors:XIONG Yuan  MENG Ling-qi
Affiliation:(College of Mechanical Engineering,Zhengzhou University,Zhengzhou 450001,Henan,China)
Abstract:On the basis of the data obtained from Cam Plastometer, a RBF neural network prediction model is established for the relation between rolling bearing steel stress and chemistry elements, temperature, strain rate and deformation strain of carbon steel by Matlab neural network toolbox. The precision of network model which is affected by the temperature and the strain rate are analyzed. The precision of network model falls with the increasing of the temperature, and the bigger the strain rate is, the higher the precision of the network model. Through compared with the BP network and Elman network, the results indicated that RBF has better accuracy and adaptability.
Keywords:RBF Neural Network  flow stress  prediction  
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