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ESTIMATION OF NUMBER OF ROLL PASSES IN ROLL FORMING USING NEURAL NETWORK

机译:使用神经网络估计轧辊成形中的轧辊通过数量

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摘要

Cold rolls, especially the number of passes, to roll-form a flat sheet to a specified cross-section have exclusively been designed by those who have had enough expertise. The potential problem with it lies in that the expertise is difficult to be inherited and to be trained due to absence of documented materials. To help solve the problem, we report a method of estimating the number of roll passes in roll forming using neural network. Based on that the data have many relevant parameters but that an enough number of learning data is not available, we optimize the learning process in the number of iterations, and we contrive a few shape factors. The method is applied to the actual data of 27 symmetrical cross-sections, to obtain the result that the number can be estimated within accuracy of ±1 pass for 85% of the cases.
机译:由具有足够专业知识的人员专门设计出冷轧辊,特别是将轧辊轧制成特定横截面的道次数。潜在的问题在于,由于缺少书面材料,因此难以继承和培训专业知识。为了帮助解决该问题,我们报告了一种使用神经网络估算轧辊成形中轧辊道次的方法。基于这些数据具有许多相关参数,但是没有足够数量的学习数据,我们在迭代次数上优化了学习过程,并设计了一些形状因子。将该方法应用于27个对称横截面的实际数据,得出的结果是,在85%的情况下,可以在±1通过的精度范围内估计数量。

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