利用数据驱动模型预测铬铁冶炼中合金的硅含量

IF 0.7 4区 材料科学 Q4 METALLURGY & METALLURGICAL ENGINEERING Journal of the Southern African Institute of Mining and Metallurgy Pub Date : 2024-03-20 DOI:10.17159/2411-9717/2297/2024
A.V. Cherkaev, M. Erwee, Q.G. Reynolds, S. Swanepoel
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引用次数: 0

摘要

铬铁(FeCr)是不锈钢生产中的重要成分,通常通过在埋弧炉中冶炼铬铁矿生产。硅(Si)是冶炼过程中产生的铬铁合金的组成部分。硅既是一种污染物,也是工艺状态的指标,因此其含量必须控制在一个很小的范围内。冶炼过程中复杂的化学反应和各种因素之间的相互作用使得通过基本模型对 Si 进行预测变得不可行。数据驱动方法提供了另一种选择,即根据历史数据建立模型。本文介绍了一个用于预测硅含量的数据驱动模型的系统开发过程。该模型包括降维、正则化线性回归和降低线性模型残差变化的提升方法。该模型在测试数据上表现良好(R2 = 0.63)。通过线性模型分析和置换测试确定,最重要的预测因素是先前的硅含量、合金中的碳和钛、熔渣中的氧化钙、电极间电阻和电极滑移。利用热力学数据和模型进行的进一步分析将这些预测因素与电极控制和熔渣联系起来。
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Prediction of silicon content of alloy in ferrochrome smelting using data-driven models
Ferrochrome (FeCr) is a vital ingredient in stainless steel production and is commonly produced by smelting chromite ores in submerged arc furnaces. Silicon (Si) is a componrnt of the FeCr alloy from the smelting process. Being both a contaminant and an indicator of the state of the process, its content needs to be kept within a narrow range. The complex chemistry of the smelting process and interactions between various factors make Si prediction by fundamental models infeasible. A data-driven approach offers an alternative by formulating the model based on historical data. This paper presents a systematic development of a data-driven model for predicting Si content. The model includes dimensionality reduction, regularized linear regression, and a boosting method to reduce the variability of the linear model residuals. It shows a good performance on testing data (R2 = 0.63). The most significant predictors, as determined by linear model analysis and permutation testing, are previous Si content, carbon and titanium in the alloy, calcium oxide in the slag, resistance between electrodes, and electrode slips. Further analysis using thermodynamic data and models, links these predictors to electrode control and slag
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来源期刊
Journal of the Southern African Institute of Mining and Metallurgy
Journal of the Southern African Institute of Mining and Metallurgy METALLURGY & METALLURGICAL ENGINEERING-MINING & MINERAL PROCESSING
CiteScore
1.50
自引率
11.10%
发文量
0
审稿时长
4.3 months
期刊介绍: The Journal serves as a medium for the publication of high quality scientific papers. This requires that the papers that are submitted for publication are properly and fairly refereed and edited. This process will maintain the high quality of the presentation of the paper and ensure that the technical content is in line with the accepted norms of scientific integrity.
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