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Predicting the Rolling Force in Hot Steel Rolling Mill using an Ensemble Model

机译:使用Ensemble模型预测热轧钢轧机的轧制力

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Accurate prediction of the roll separating force is critical to assuring the quality of the final product in steel manufacturing. This paper presents an ensemble model that addresses these concerns. A stacked generalization approach to ensemble modeling is used with two sets of the ensemble model members, the first set being learnt from the current input-output data of the hot rolling finishing mill, while another uses the available information on the previous coil in addition to the current information. Both sets of ensemble members include linear regression, multilayer perceptron, and k-nearest neighbor algorithms. A competitive selection model (multilayer perceptron) is then used to select the output from one of the ensemble members to be the final output of the ensemble model. The ensemble model created by such a stacked generalization is able to achieve extremely high accuracy in predicting the roll separation force with the average relative accuracy being within 1% of the actual measured roll force.
机译:辊分离力的准确预测对于确保钢铁生产中最终产品的质量至关重要。本文提出了一个综合模型来解决这些问题。集成的总体建模方法与两组集成模型成员一起使用,第一组是从热轧精轧机的当前输入-输出数据中学习的,而另一组则使用前一卷材的可用信息当前信息。两组集合成员都包括线性回归,多层感知器和k最近邻算法。然后使用竞争性选择模型(多层感知器)从一个集成成员中选择输出,作为该集成模型的最终输出。通过这种堆叠概括而创建的集成模型能够在预测辊分离力时实现极高的精度,并且平均相对精度在实际测得的辊力的1%之内。

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