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焦炉集气管压力自适应预测解耦控制系统设计
引用本文:张世峰,周建芳.焦炉集气管压力自适应预测解耦控制系统设计[J].重庆大学学报(自然科学版),2009,32(1):105-110.
作者姓名:张世峰  周建芳
作者单位:安徽工业大学电气信息学院,安徽,马鞍山,243002  
基金项目:安徽省教育厅自然科学研究项目 
摘    要:针对焦炉集气管压力系统具有强耦合、强干扰、典型非线性、时滞等特点,在系统控制过程中将压力分段考虑,用基于RBF神经网络辨识的单神经元控制器和PID控制相结合的方法,保证集气管压力稳定在工艺要求的范围内;在总管控制级用RBF神经网络预测模型对鼓风机机前吸力的实际输出进行超前预测以克服鼓风机控制系统的时滞.仿真示例和应用结果都表明该方案具有理想的控制效果.

关 键 词:集气管压力  鼓风机系统  预测控制  解耦  神经网络控制

A radial basis function neural network based self adapting predictive decoupling control system for gas collector pressure in coke ovens
ZHANG Shi feng and ZHOU Jian fang.A radial basis function neural network based self adapting predictive decoupling control system for gas collector pressure in coke ovens[J].Journal of Chongqing University(Natural Science Edition),2009,32(1):105-110.
Authors:ZHANG Shi feng and ZHOU Jian fang
Institution:Department of Electrical Engineering& Information;Anhui University of Technology;Ma'anshan 243002;P.R.China
Abstract:Pressure is measured at different levels in the loop layer because self-adapting predictive decoupling control systems are strongly coupled,disturbed,and non-linear and there is a long time delay for gas collector pressure systems in coke ovens.By combing the traditional neural network control and proportional integral differential(PID) controllers based on radial basis function(RBF) neural network identification,the gas collector pressure is ensured to reach the desired technology range.The prediction mode...
Keywords:pressure of gas collectors  fan system  predictive control  decoupling  neural network control  
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