基于神经网络的高炉铁水硅含量预测模型的应用

D. Qiu, De-jiang Zhang, W. You, Niaona Zhang, Hui Li
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引用次数: 5

摘要

径向基函数(RBF)神经网络基于其快速收敛和全局寻优的特点,用于高炉铁水预测。由于铁水硅含量与炉温关系密切,因此铁水硅含量间接反映了炉温的变化。利用Matlab中的Newrbe函数进行函数逼近。采用长时间正常生产的归一化数据进行训练和仿真。结果表明,该方法提高了硅含量预测的准确率。将RBF神经网络预测模型应用于高炉,可以预测高炉硅含量,判断温度变化趋势,实现对高炉温度的控制,有利于节能。该模型能够同时对多目标进行监测,为高炉生产过程提供指导
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AN application of prediction model in blast furnace hot metal silicon content based on neural network
Radial Basis Function (RBF) neural network is used to predict the blast furnace hot metal based on its characteristics such as fast convergence and global optimization. As hot metal silicon content had close relationship with furnace temperature, the change of temperature in furnace was reflected indirectly by hot metal silicon content. Newrbe function in Matlab was applied for function approximation. Normalized data of normal production for a long period was used for training and simulation. The results showed that the hitting rate of prediction for silicon content was improved. The application of RBF neural network prediction model in blast furnace could forecast Si-content, judge the trend of temperature and realize the control of blast furnace temperature, which was advantageous to energy saving. Moreover, the model can monitor multi-objects simultaneously and provide guidance for blast furnace process
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