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Strip Snap Analytics in Cold Rolling Process Using Machine Learning

机译:使用机器学习的冷轧过程中的剥离快速分析

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Strip snap, also known as strip breakage or belt tearing, is an undesirable quality incident which results in yield loss and reduced work speed in the cold rolling process of strip products. Therefore, it is necessary to reveal a functional relationship between certain selected variables and strip snap event for the aim of quality improvement. In this study, the probability of strip snap occurrence was quantified by a selected measured variable. Several machine learning algorithms were adopted to predict this target probability. To validate this approach, a case study was conducted based on real-world data collected from an electrical steel reversing mill. The excessively good performance indicates several variables which are strongly correlated with the target.
机译:条带扣环,也称为条带破损或皮带撕裂,是一种不希望的质量事件,导致带材产品冷轧过程中的屈服损失和减少的工作速度。因此,有必要揭示某些所选变量与条带快照事件之间的功能关系,以实现质量改进。在该研究中,通过所选测量的变量量化条带捕捉的概率。采用了几种机器学习算法来预测该目标概率。为了验证这种方法,基于从电动钢换磨机收集的真实数据进行的案例研究。过度良好的性能指示若干变量与目标强烈相关。

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