During the strip rolling process, a considerable amount of the forces of the material pressure cause elastic deformation on the work-roll, i.e., the deflection process. The uncontrollable amount of the work-roll deflection leads to the high deviations in the permissible thickness of the plate along its width. In the context of the Austenitic Stainless Steels (ASS), due to the instability of the Austenite phase in a cold temperature, cold deformation leads to the production of Strain-Induced Martensite (SIM), which improves the mechanical properties. It leads to the hardening of the ASS 316L during the cold deformation, which causes the Strain-Stress curve of the ASS 316L to behave non-linearly, which distinguishes it from other categories of steels. To account for this phenomenon, we propose to utilize a Machine Learning (ML) method to predict more accurately the flow stress of the ASS 316L during the cold rolling. Furthermore, we conduct various mechanical tensile tests in order to obtain the required dataset, Stress316L, for training the neural network. Moreover, instead of using a constant value of flow stress during the multi-pass rolling process, we use a Finite Difference (FD) formulation of the equilibrium equation in order to account for the dynamic behavior of the flow stress, which leads to the estimation of the mean pressure, which the strip enforces to the rolls during deformation. Finally, using the Finite Element Analysis (FEA), the deflection of the work-roll tools will be calculated. As a result, we end up with a generalized model for the calculation of the roll deflection, specific to the ASS 316L. To the best of our knowledge, this is the first model for ASS 316L which considers dynamic flow stress and SIM of the rolled plate, using FEM and an ML approach, which could contribute to the better design of the tolls.


翻译:在条形滚动过程中,大量物质压力的力量导致工作滚动,即偏转过程的弹性变换。工作滚动偏移的不可控制量导致板块宽度的允许厚度出现高度偏差。在Austentic不锈钢(ASS)中,由于Austenite 阶段在寒冷的温度下不稳定,冷变形导致Strain-Induced Martensite(SIM)生产出改进机械特性的Strain-Induced Martensite(SIM)。这导致ASS 316L在冷变换过程中变硬了ASS 316L,导致ASS STrems曲线沿着宽宽宽度的不线性调整,导致板块宽度的允许厚厚厚厚厚厚厚厚厚。为了说明这种现象,我们建议使用机械学习(ML)方法更准确地预测ASS 316L 的流压模型的流量。此外,我们进行各种机械变压测试,以获得所需的数据设置,Syloal3L AL 滚动, 滚动变动变动的变压结果,用Salalalalalalalalalalalalalalal 的计算过程进行我们使用一个不断变压的计算过程的计算,再使用Sildal-de maxxxxxxx 。

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