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The use of artificial neural networks for the prediction of a chemical composition of hot metal produced in blast furnace

机译:人工神经网络在高炉生产的铁水化学成分预测中的应用

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Purpose: The paper presents the possibilities of using neural networks for the prediction of chemical composition of hot metal produced in blast furnace.Design/methodology/approach: Three blast furnaces in ArcelorMittal, Unit in DajDrowa Gornicza, provided the data for the model construction. The data reflect a number of variables, which describe the blast furnace process.Findings: The results obtained, based on input parameters, show that the construction of such neural networks is viable. There is a good correlation between expected and actual results.Practical implications: The model can be used as an auxiliary tool for blast furnace operators.Originality/value: Prediction of a chemical composition of hot metal at the stage of adjusting hot metal process parameters.
机译:目的:本文提出了使用神经网络预测高炉生产的铁水化学成分的可能性。设计/方法/方法:位于DajDrowa Gornicza单位ArcelorMittal的三座高炉为模型构建提供了数据。数据反映了描述高炉过程的许多变量。结果:基于输入参数获得的结果表明,这种神经网络的构建是可行的。预期结果与实际结果之间有很好的相关性。实际意义:该模型可以用作高炉操作员的辅助工具。原始数据/值:在调整铁水工艺参数阶段对铁水的化学成分进行预测。

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