引用本文:刘建昌, 陈莹莹, 张瑞友.基于PSO-BP网络的板形智能控制器[J].控制理论与应用,2007,24(4):674~678.[点击复制]
LIU Jian-chang, CHEN Ying-ying, ZHANG Rui-you.Intelligent flatness-controller based on PSO-BP network[J].Control Theory and Technology,2007,24(4):674~678.[点击复制]
基于PSO-BP网络的板形智能控制器
Intelligent flatness-controller based on PSO-BP network
摘要点击 1396  全文点击 1705  投稿时间:2006-03-14  修订日期:2006-07-18
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DOI编号  10.7641/j.issn.1000-8152.2007.4.032
  2007,24(4):674-678
中文关键词  板形  粒子群优化  模式识别  效应矩阵  误差反传递网络
英文关键词  flatness  particle swarm optimization(PSO)  pattern-recognition  effective matrix  back propagation(BP) network
基金项目  国家自然科学基金资助项目(60474042); 辽宁省自然科学基金资助项目(20052033).
作者单位
刘建昌, 陈莹莹, 张瑞友 东北大学流程工业综合自动化教育部重点实验室, 辽宁沈阳110004
东北大学信息科学与工程学院, 辽宁沈阳110004 
中文摘要
      为了解决传统的板形识别与控制中的识别精度低, 控制速度慢等问题, 将粒子群优化(particle swarm optimization, PSO)算法和误差反传递(back propagation, BP)算法混合训练的PSO-BP网络引入到板形的识别与控制中. 首先根据板形轧制的历史数据, 建立预测板形的神经网络, 得到反映板形控制手段对板形特征参数影响的效应矩阵, 同时根据理论数据建立对板形进行模式识别的神经网络. 这些都是离线进行的, 而且对一批板材只需训练一次神经网络, 在线轧制过程中只需要根据识别网络的识别结果和效应矩阵, 便可以很快的得到需要的控制量. 这种方法可以简化板形控制过程, 提高控制速度, 最后的仿真实验进一步说明了这种方法的有效性.
英文摘要
      In order to solve the problems of low-precision and slow control of the traditional algorithms in the pattern recognition and control of flatness, the neural network trained by hybrid algorithms of particle swarm optimization (PSO) and back propagation (BP) is introduced. According to the rolling data in history, the PSO-BP network for predicting flatness is trained. As a result, the effective matrix reflecting the effects of adjustable parameters on the eigen-parameters of flatness is obtained. At the same time, the network for recognizing flatness is trained based on theoretical data. The networks are trained only once for a batch of strips. And the corresponding adjustments of parameters can be quickly calculated on line based on the effective matrix. Therefore, this approach can simplify and speed up the control of flatness. Finally, its effectiveness is proved by the given case study.