基于 Optuna-GBDT 的高炉热金属硅含量预测

IF 1.6 4区 材料科学 Q2 METALLURGY & METALLURGICAL ENGINEERING
Lili Meng, Jinxiang Liu, Ran Liu, Hongyang Li, Zhi Zheng, Yao Peng, Xi Cui
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引用次数: 0

摘要

铁水含硅量是判断高炉状态的关键指标,准确预测铁水含硅量对高炉炼铁至关重要。首先,对从某钢铁企业现场获得的 10992 组高炉数据进行预处理。然后,通过特征工程筛选出与铁水含硅量相关的 22 个重要特征参数。最后,在 Optuna 框架的帮助下优化了梯度提升决策树(GBDT)算法模型的超参数,并建立了 Optuna-GBDT 模型来预测热金属硅含量。实验结果表明,与贝叶斯算法和传统的随机搜索方法相比,Optuna框架可以实现更好的超参数优化,迭代次数更少,误差更小。与优化后的随机森林(RF)、决策树和AdaBoost模型相比,Optuna-GBDT模型在预测热金属硅含量方面表现更好,预测结果与实际值基本一致,平均绝对误差(MAE)为0.实验结果验证了建立 Optuna-GBDT 模型预测铁水含硅量的有效性和可行性,为钢铁企业提供了可靠的工具,有助于优化炼铁工艺,提高生产效率和产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Silicon Content of Hot Metal in Blast Furnace Based on Optuna-GBDT

The silicon content of hot metal is a key index for the determination of blast furnace status, and accurate prediction of the silicon content of hot metal is crucial for blast furnace ironmaking. First, 10992 sets of blast furnace data obtained from the site of an iron and steel enterprise were preprocessed. Then, 22 important feature parameters related to the silicon content of hot metal were screened by feature engineering. Finally, the hyperparameters of the Gradient Boosting Decision Tree (GBDT) algorithm model were optimized with the help of the Optuna framework, and the Optuna-GBDT model was established to predict the silicon content of hot metal. The experimental results show that compared with the Bayesian algorithm and the traditional stochastic search method, the Optuna framework can achieve better hyperparameter optimization with fewer iterations and smaller errors.The Optuna-GBDT model performs better in predicting the silicon content of hot metal compared with the optimized Random Forest (RF), Decision Tree and AdaBoost models, and the prediction results are basically in line with the actual values, with the mean absolute error (MAE) of 0.0094, the root mean square error (RMSE) of 0.0152, and the coefficient of determination (R2) of 0.975.The experimental results verified the validity and feasibility of establishing the Optuna-GBDT model to predict the silicon content of hot metal, which provides a reliable tool for iron and steel enterprises and helps to optimize the ironmaking process, improve production efficiency and product quality.

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来源期刊
Isij International
Isij International 工程技术-冶金工程
CiteScore
3.40
自引率
16.70%
发文量
268
审稿时长
2.6 months
期刊介绍: The journal provides an international medium for the publication of fundamental and technological aspects of the properties, structure, characterization and modeling, processing, fabrication, and environmental issues of iron and steel, along with related engineering materials.
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