论文标题
学习预测热滚动过程中的金属变形
Learning to predict metal deformations in hot-rolling processes
论文作者
论文摘要
热卷是一个金属形成过程,它通过一系列塑性变形序列产生一个工件,该工件具有所需的目标横截面。每个变形都是由由具有特定几何形状的相对卷组成的架子产生的。在目前的实践中,实现给定最终横截面所需的滚动顺序(即,架子的顺序和卷的几何形状)是根据以前的经验设计的,专家是根据以前的经验而设计的,并且在昂贵的试用和错误过程中进行了改进。越来越多地采用有限元方法模拟,以提高此过程的效率并测试潜在的滚动序列,以长时间的模拟时间成本实现了良好的准确性,从而限制了该方法的实际使用。我们提出了一种监督的学习方法,以通过一组具有给定几何形状的卷来预测给定工件的变形。该模型经过大量的程序生成的FEM模拟数据集进行了培训,我们将其作为补充材料发布。所得的预测指标比模拟快四个数量级,并产生平均JACCARD相似性指数为0.972(来自模拟的地面真相)和0.925(针对现实世界测得的变形);我们还报告了使用预测因子自动规划滚动序列的初步结果。
Hot-rolling is a metal forming process that produces a workpiece with a desired target cross-section from an input workpiece through a sequence of plastic deformations; each deformation is generated by a stand composed of opposing rolls with a specific geometry. In current practice, the rolling sequence (i.e., the sequence of stands and the geometry of their rolls) needed to achieve a given final cross-section is designed by experts based on previous experience, and iteratively refined in a costly trial-and-error process. Finite Element Method simulations are increasingly adopted to make this process more efficient and to test potential rolling sequences, achieving good accuracy at the cost of long simulation times, limiting the practical use of the approach. We propose a supervised learning approach to predict the deformation of a given workpiece by a set of rolls with a given geometry; the model is trained on a large dataset of procedurally-generated FEM simulations, which we publish as supplementary material. The resulting predictor is four orders of magnitude faster than simulations, and yields an average Jaccard Similarity Index of 0.972 (against ground truth from simulations) and 0.925 (against real-world measured deformations); we additionally report preliminary results on using the predictor for automatic planning of rolling sequences.