数据驱动的钢卷生产剩余物料预测

Ziyan Zhao, Xiaoyue Yong, Shixin Liu, Mengchu Zhou
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引用次数: 9

摘要

一家钢铁企业目前正在努力避免出现多余的材料,因为它们会大大增加其运营成本。钢铁产品生产过程复杂,导致物料过剩的原因很难找到。在这项工作中,我们提出了一个剩余材料预测问题,并基于统计分析和机器学习方法来解决它。在该问题中,我们预测在给定的一组生产参数下是否有剩余物料。这项工作中使用的数据集来自一个真实的三个月的钢卷生产过程。首先,进行数据清洗,规范工业数据集。然后,通过一系列特征选择方法选择与剩余物料预测结果高度相关的生产参数;最后,根据选取的特征,提出了基于极端梯度增强和逻辑回归的两种预测模型。实验结果表明,所提出的预测模型具有相似的有效性。一个可见的回归函数使逻辑回归方法更适合于实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven Surplus Material Prediction in Steel Coil Production
A steel enterprise is currently trying to avoid the presence of surplus materials since they can greatly increase its operational cost. The complicated production process of steel products makes it difficult to find the causes of surplus materials. In this work, we propose a surplus material prediction problem and solve it based on statistical analysis and machine learning methods. In the concerned problem, we predict whether there are surplus materials under a given group of production parameters. The dataset used in this work is from a real-world three-month steel coil production process. First, data cleaning is conducted to standardize the industrial dataset. Then, the production parameters highly correlated with surplus material prediction results are selected by a series of feature selection methods. Finally, two prediction models based on extreme gradient boosting and logistic regression are presented according to the selected features. The experimental results reveal that the proposed prediction models have similar effectiveness. A visible regression function makes the logistic regression method more suitable for practical application.
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