应用神经网络加速数学模型计算扁轧带钢轮廓

Y. Shigaki, H. Helman
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引用次数: 1

摘要

自六十年代以来,无数的数学模型已经开发出来模拟平轧,特别是确定其宽度方向的轮廓。其中,Pawelski, Rasp和其他人已经开发了一个精确的模型,该模型考虑了轧辊的弯曲,剪切和变平的影响,这些对准确计算紧急带材轮廓至关重要。该方法将带钢和轧辊分成许多条,并假定其为平面应变状态。对轧辊和带材的每一条带,分别用解析法计算了载荷和变形。通过对轧辊的影响系数来考虑弯曲、剪切和压扁的影响。虽然这种方法得到的结果与经验得到的结果很吻合,但程序运行时太大,必须将其视为脱机系统。由于该程序是迭代工作的,并且由于几乎每次迭代都必须更新平坦化的影响系数矩阵的计算非常耗时,因此可以通过替换经过训练的神经网络来提高程序速度,使其在整个数学模型中作为平等的伙伴工作。神经网络可以在反方向上进行训练,使得对平坦矩阵的快速“反演”成为可能。这种组合模型的接受度更高,因为它不像黑盒那样出现,即仅仅是基于神经网络的模型,因此它可以适应在线过程控制。设计了两个前馈神经网络来解决平面化和载荷的计算问题:一个用于负载-平面化,另一个用于反演。采用反向传播学习规则。在不损失精度的情况下,大大减少了处理时间,因为摊平计算步骤被具有适当激活函数的简单多项式和所取代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of a neural network to speed up a mathematical model to calculate strip profiles in flat rolling
Since the sixties, innumerable mathematical models have been developed to simulate flat rolling, specifically, to determine its width-wise profile. Among these, Pawelski, Rasp and others have developed a precise model that accounts for the influence of bending, shearing and flattening of the rolls which are crucial to calculate emergent strip-profiles accurately. This method divides the strip and roll into many stripes, assuming a plane-strain state. For each stripe of the roll and strip, the load and deformation respectively are calculated using an analytical approach. The effects of bending, shearing and flattening are considered through influence coefficients on the rolls. Though good agreement is achieved between the results of this method and those obtained by experience, the program run-time is so large that it must be considered an off-line system. Since the program works iteratively, and since calculation of the influence coefficient matrix for flattening is time-consuming as it must be updated nearly every iteration, improvement in program speed can be achieved by substituting a trained neural network, working as an equal partner in the entire mathematical model. The neural network can be trained in the inverse direction, making possible very fast "inversion" of the flattening matrix. This combined model has better acceptance since it doesn't appear as a black box, i.e., a model based on neural networks only, and so it can be adapted for online process control. Two feedforward neural networks were designed to cope with the problem of calculating flattening and loading: one for load-to-flattening and the second for inversion. A backpropagation learning rule was used. Substantial reduction in processing time is obtained, without loss of precision, since the flattening calculation step is substituted by a simple sum of polynomials with an appropriate activation function.
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