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Numerical and experimental analysis of strip cross-directional control and flatness prediction for UCM cold rolling mill

机译:UCM冷轧机带钢横向控制和板形预测的数值和实验分析

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摘要

In cold rolling of strip, flatness defects typically appear in strip when subjected to heterogeneous thickness reductions across the width of strip. As crown and flatness are interrelated, the crown ratio variation is used to qualitatively predict flatness defect mode. An investigation on the shape prediction and control of strip is presented in this paper. Taking these purposes into account, a three-dimensional finite element model for the Universal Crown Control mill (UCM mill) and strip containing different basic crown patterns is developed, and applied to two questions, namely prediction of flatness defect position and analysis of actuator control efficiency. The results indicate that the approach of crown ratio factor only gives the prediction for the edge and center waves, but it can't distinguish quarter-wave. Therefore, an improved approach based on the varying curve of crown ratio, which can give the location of the flatness defect in more detail, is proposed. Moreover, combined with the study concerning control feature and capacity on thickness profile and flatness of strip, an original solution for obtaining the actuator efficiency factor is implemented. Finally, the curve of actuator efficiency factor obtained by the model is tested online in a flatness closed-loop control system.
机译:在钢带的冷轧中,当钢带宽度上的厚度不均匀减小时,通常会在钢带中出现平整度缺陷。由于凸度和平面度是相互关联的,因此凸度比变化可用于定性预测平面度缺陷模式。本文对带材的形状预测和控制进行了研究。考虑到这些目的,针对通用凸度控制轧机(UCM轧机)和包含不同基本凸度图案的带钢建立了三维有限元模型,并将其应用于两个问题,即平整度缺陷位置的预测和执行器控制的分析效率。结果表明,冠比系数法只能给出边波和中心波的预测,而不能区分四分之一波。因此,提出了一种基于凸度比变化曲线的改进方法,该方法可以更详细地给出平坦度缺陷的位置。此外,结合对带材厚度轮廓和平直度的控制特性和容量的研究,实现了获得执行器效率因子的原始解决方案。最后,在平坦度闭环控制系统中在线测试由模型获得的执行器效率因子曲线。

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