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A Mill Set-up Model Using a Multi-output Regression Tree for a Tandem Cold Mill Producing Stainless Steel

机译:使用多输出回归树的串联冷轧机生产不锈钢的轧机设置模型

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In a tandem cold mill for stainless steel, an optimum reduction rate is necessary for each stand. A conventional mill set-up uses a lookup-table to optimize the rolling schedule. However, to reflecting all the input conditions and manual interventions on a model is difficult. In this paper, we propose a mill set-up model that can efficiently predict the reduction rate for each stand by considering various input conditions. The proposed prediction model has a multi-output tree structure with a smaller time complexity for easy interpretation. The key contribution to the proposed algorithm is variable selection. According to the results of an analysis of the time-complexity, the proposed algorithm is less time consuming and is capable of learning datasets with a large number of variables more efficiently than the single-output CART (classification and regression trees). To evaluate the performance of the proposed algorithm, we applied it to the rolling reduction rate of a tandem cold mill in POSCO. The proposed algorithm achieves a similar level of R-squared in only 18% of the computing time required for an existing single-output CART algorithm.
机译:在用于不锈钢的串列式冷轧机中,每个机架都需要最佳的压下率。传统的轧机设置使用查找表来优化轧制计划。但是,要在模型上反映所有输入条件和手动干预是困难的。在本文中,我们提出了一种轧机设置模型,该模型可以通过考虑各种输入条件来有效预测每个机架的压下率。所提出的预测模型具有多输出树结构,其时间复杂度较小,易于解释。该算法的关键贡献在于变量选择。根据时间复杂度的分析结果,所提出的算法耗时少,并且比单输出CART(分类树和回归树)能够更有效地学习具有大量变量的数据集。为了评估该算法的性能,我们将其应用于POSCO的冷连轧机的轧制率。所提出的算法仅在现有单输出CART算法所需的计算时间的18%内即可达到类似的R平方水平。

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