基于决策树的双支持向量机在转炉炼钢除磷分类中的应用

J. Phull, J. Egas, S. Barui, S. Mukherjee, K. Chattopadhyay
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引用次数: 7

摘要

在碱性氧炉(BOF)中,通过除磷来保证最终产品钢的高质量是必不可少的,否则会导致冷短。本文旨在基于数据挖掘技术,通过转炉炼钢终点磷含量来了解转炉炼钢的脱磷过程。脱磷通常通过分配比(lp)来量化,即炉渣中wt% p与钢中wt% p的比值。本研究的重点是根据渣化学和出钢温度对最终钢进行分类,而不是预测lp值。这种分类表示在转炉中磷被去除的不同程度(“高”、“中等”、“低”和“极低”)。基于无监督k均值聚类方法,对两家钢铁厂(厂一和厂二)约16000台炉的炉渣化学和出渣温度数据进行了四类分析。实现了基于决策树的双支持向量机(TWSVM)分类算法。采用高斯混合模型(GMM)、均值漂移(MS)和亲和传播(AP)算法构建决策树。用分类率(classification rate, CR)评价预测分类的准确性。模型验证采用五重交叉验证技术进行。将拟合模型与应用于相同数据的基于决策树的支持向量机(SVM)算法在CR方面进行比较。GMM-TWSVM模型的精度最高(≥97%),说明利用该模型的结构对炉渣组分进行适当的操纵,可以实现更大程度的p -分区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Decision Tree-Based Twin Support Vector Machines to Classify Dephosphorization in BOF Steelmaking
Ensuring the high quality of end product steel by removing phosphorus content in Basic Oxygen Furnace (BOF) is essential and otherwise leads to cold shortness. This article aims at understanding the dephosphorization process through end-point P-content in BOF steelmaking based on data-mining techniques. Dephosphorization is often quantified through the partition ratio ( l p ) which is the ratio of wt% P in slag to wt% P in steel. Instead of predicting the values of l p , the present study focuses on the classification of final steel based on slag chemistry and tapping temperature. This classification signifies different degrees (‘High’, ‘Moderate’, ‘Low’, and ‘Very Low’) to which phosphorus is removed in the BOF. Data of slag chemistry and tapping temperature collected from approximately 16,000 heats from two steel plants (Plant I and II) were assigned to four categories based on unsupervised K-means clustering method. An efficient decision tree-based twin support vector machines (TWSVM) algorithm was implemented for category classification. Decision trees were constructed using the concepts: Gaussian mixture model (GMM), mean shift (MS) and affinity propagation (AP) algorithm. The accuracy of the predicted classification was assessed using the classification rate (CR). Model validation was carried out with a five-fold cross validation technique. The fitted model was compared in terms of CR with a decision tree-based support vector machines (SVM) algorithm applied to the same data. The highest accuracy (≥97%) was observed for the GMM-TWSVM model, implying that by manipulating the slag components appropriately using the structure of the model, a greater degree of P-partition can be achieved in BOF.
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