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Prediction of roll force in skin pass rolling using numerical and artificial neural network methods

机译:用数值和人工神经网络方法预测皮肤轧制轧制轧制

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摘要

A combination of finite element method and neural network methods was used for rapid prediction of the roll force during skin pass rolling of 980DP and 1180CP high strength steels. The FE based commercial package DEFOEM-2D was used to develop a mathematical model of the skin pass rolling operation. Numerical experiments were designed with different process parameters to produce training data for a neural network algorithm. The friction coefficient was considered as an input parameter in the neural network but it was optimised using an iterative method employing an equation that relates the friction coefficient to the rolling force. The load prediction method described in this paper is sufficiently rapid that it can be used in real-time as an adjustment tool for skin pass rolling mills with error within 10% (based on plant data from POSCO).
机译:有限元方法和神经网络方法的组合用于980dp和1180cp高强度钢的皮肤轧制过程中卷发的快速预测。 FE基础的商业包Defoem-2D用于开发皮肤通过轧制操作的数学模型。 使用不同的工艺参数设计数值实验,以产生神经网络算法的训练数据。 将摩擦系数被认为是神经网络中的输入参数,但是使用采用与滚动力的摩擦系数相关的等式进行迭代方法进行了优化。 本文中描述的负载预测方法足够快地,它可以实时使用,作为皮肤通过误差的调节工具,其误差在10%以内(基于来自POSCO的植物数据)。

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