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基于自适应模糊神经网络的铜闪速熔炼渣含Fe/SiO_2模型研究
引用本文:曾青云,汪金良,张传福. 基于自适应模糊神经网络的铜闪速熔炼渣含Fe/SiO_2模型研究[J]. 江西有色金属, 2011, 2(1): 5-8
作者姓名:曾青云  汪金良  张传福
作者单位:曾青云,汪金良,ZENG Qing-yun,WANG Jin-liang(江西理工大学材料与化学工程学院,江西,赣州,341000;中南大学冶金科学与工程学院,长沙,410083);张传福,ZHANG Chuan-fu(中南大学冶金科学与工程学院,长沙,410083)
基金项目:国家自然科学基金资助项目,江西省自然科学基金资助项目
摘    要:基于Sugeno型自适应模糊神经网络系统(ANFIS)及利用某闪速炼铜厂生产实践的稳定数据,建立了网络结构为3输入、单输出、隶属度函数个数为[5 3 5]的闪速炼铜过程的渣含Fe/SiO2模型.结果显示其训练数据平均绝对误差为0.0055,相对误差为1.4%;仿真检验数据平均绝对误差为0.028,相对误差为2.9%,表明所建立的模型预测值与生产操作数据基本吻合,该模型对铜熔炼过程的最优化具有参考价值,可以代替现有的静态配料模型用于工业在线计算机控制.

关 键 词:  闪速熔炼  模糊控制  神经网络  仿真

Research of the Fe/SiO2 in Slag Model of Copper Flash Smelting Process Based on ANFIS
ZENG Qing-yun,WANG Jin-liang,ZHANG Chuan-fu. Research of the Fe/SiO2 in Slag Model of Copper Flash Smelting Process Based on ANFIS[J]. Jiangxi Nonferrous Metals, 2011, 2(1): 5-8
Authors:ZENG Qing-yun  WANG Jin-liang  ZHANG Chuan-fu
Affiliation:1.Faculty of Material and Chemical Engineering,Jiangxi University of Science and Technology,Ganzhou 341000,China; 2.Central South University School of Metallurgical Science and Engineering,Changsha 410083,China)
Abstract:The Fe/SiO2 in Slag model of copper flash smelting process,which has the net-structure of 3 in-put,single out-put data,and the membership functions are,was developed based on Adaptive Fuzzy Inference System and the practical data from one Copper smelter.The results indicate the average absolute error of train samples is 0.0055 and the relative error percentage is 1.4%.The simulation results show that the average absolute error is 0.028%,and the relative error percentage is 2.9%.It means that the simulative results accord to the practical data.Thus,the model has good reference value on process optimized control of copper smelting.It also can be used in industrial online control to replace the model of static mixture.
Keywords:copper  flash smelting  fuzzy control  neural network  simulating
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