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BP神经网络漏钢预测系统优化
引用本文:厉英.BP神经网络漏钢预测系统优化[J].控制与决策,2010,25(3):453-456.
作者姓名:厉英
作者单位:1. 东北大学材料与冶金学院,沈阳,110004
2. 东北大学计算中心,沈阳,110004
基金项目:国家高技术研究发展计划项目(2007AA03Z556)
摘    要:针对传统逻辑漏钢预测系统稳定性差、收敛速度慢、收敛精度低等缺点,建立具有自组织、自学习等功能的误差反向传播BP神经网络预测模型.采用变步长并加入动量项、防振荡项等方法,使网络训练过程能够跳出局部极小,加快了收敛速度.系统改变以往只将温度数据作为输入参数的传统,将拉速、中间包钢水温度作为考虑因素,扩大了漏钢因素的考虑范围.实验结果表明,采用BP神经网络对某炼钢厂实际数据进行漏钢预测,预报结果准确,具有较好的在线应用前景.

关 键 词:BP神经网络  自学习  连铸  漏钢预测  
收稿时间:2009/5/21 0:00:00
修稿时间:2009/8/14 0:00:00

Optimization for Breakout Prediction System of BP Neural Network
LI Ying,WANG Zheng,AO Zhi-guang,ZHAI Ying-ying,PANG Wei-cheng.Optimization for Breakout Prediction System of BP Neural Network[J].Control and Decision,2010,25(3):453-456.
Authors:LI Ying  WANG Zheng  AO Zhi-guang  ZHAI Ying-ying  PANG Wei-cheng
Affiliation:a.School of Materials Science and Metallurgy/a>;b.Computing Center/a>;Northeastern University/a>;Shenyang 110004/a>;China.
Abstract:In order to overcome the problems of slow speed and low accuracy of convergence,and the shortcomings of poor stability of the traditional logical prediction of breakout system,this paper designs a breakout predicting model based on BP neural network which is capable of self-organize and self-learn. The BP algorithm is modified to improve its learning speed such as changing study rate,adding momentum item and avoiding vibration item,so the network can escape from the local minimum while it is training. The d...
Keywords:BP neural network  Self-learn  Continues casting  Prediction of breakout  
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