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基于改进GA的神经网络电弧炉预测控制系统研究
引用本文:张晓晖,刘丁. 基于改进GA的神经网络电弧炉预测控制系统研究[J]. 工业加热, 2006, 35(2): 59-63
作者姓名:张晓晖  刘丁
作者单位:西安理工大学,信息与控制工程中心,陕西,西安,710048;西安理工大学,信息与控制工程中心,陕西,西安,710048
摘    要:电弧炉炼钢是一种复杂的工业生产过程,电极调节系统的性能是影响生产效益的重要因素。首先介绍了一种采用扩展DBD学习算法的电极神经网络预测控制方法,指出在实际应用中,这种控制方法存在着神经网络预测模型收敛速度慢的问题。针对此问题,提出了一种以改进GA和扩展DBD相结合的方法作为学习算法的预测控制方案,仿真结果表明,它可以较好地解决神经网络预测模型收敛速度慢的问题,并可以在一定程度上提高预测模型的输出精度。

关 键 词:电弧炉  电极调节系统  预测控制  神经网络  扩展DBD算法  遗传算法
文章编号:1002-1639(2006)02-0059-04
收稿时间:2005-10-19
修稿时间:2005-10-19

A Neural Network Electric Arc Furnace Predictive Control System Based on Modified Genetic Algorithm
ZHANG Xiao-hui,LIU Ding. A Neural Network Electric Arc Furnace Predictive Control System Based on Modified Genetic Algorithm[J]. Industrial Heating, 2006, 35(2): 59-63
Authors:ZHANG Xiao-hui  LIU Ding
Abstract:Electric Arc Furnace steel-making is a complex industrial production process and the performance of its electrode adjusting systemis a key factor which can effect the production benefit. The paper firstly introduces an electrode neural network predictive control method,which adopts the extended DBD algorithm as learning method, and points out that its convergent speed is slow in practice appliance. Thus,a new predictive control method, which combines the modified Genetic Algorithm with the extended algorithm, is presented consequently.The simulation result indicates that it can solve the slow convergent speed problem of neural network predictive model and improve the outputprecision of predictive model in a certain extent.
Keywords:electric arc furnace  electrode adjusting system  predictive control  neural network  extendedDBD algorithm  genetic algorithm  
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