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Application of artificial neural network model to predict reduction degradation index of iron oxides pellets

机译:人工神经网络模型在氧化铁颗粒还原降解指数预测中的应用

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摘要

The reduction degradation index (RDI) is an important metallurgical property of iron ore pellets used for the production of RDI from shaft furnace or for use in blast furnaces. In order to develop a control strategy, a neural network model has been developed to predict the RDI of pellets from 13 input variables, namely feedrate of green pellets, bed height, burn through temperature, firing temperature, specific corex gas consumption, bentonite, moisture and carbon content in green pellets and Al_2O_3, SiO_2, CaO, MgO and FeO in fired pellets. The RDI of pellets was more sensitive to variation in MgO, CaO, bentonite and green pellet carbon content. The predicted results were in good agreement with the actual data.
机译:还原降解指数(RDI)是铁矿石球团的重要冶金性能,用于从竖炉生产RDI或用于高炉。为了制定控制策略,已经开发了一个神经网络模型来从13个输入变量预测颗粒的RDI,这些变量是生坯的进料速度,床层高度,燃烧温度,烧成温度,特定的Corex气体消耗量,膨润土,水分颗粒中的碳含量以及烧成颗粒中的Al_2O_3,SiO_2,CaO,MgO和FeO。颗粒的RDI对MgO,CaO,膨润土和绿色颗粒碳含量的变化更为敏感。预测结果与实际数据吻合良好。

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