首页> 外文期刊>Journal Of The South African Institute Of Mining & Metallurgy >Application of finite element method and artificial neural networks to predict the rolling force in hot rolling of Mg alloy plates
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Application of finite element method and artificial neural networks to predict the rolling force in hot rolling of Mg alloy plates

机译:有限元法和人工神经网络在Mg合金板中预测轧制中的应用

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摘要

A computational model combining a finite element method (FEM) with an artificial neural network (ANN) was developed to predict the rolling force in the hot rolling of Mg alloy plates. FEM results were compared with experimental data to verify the accuracy of the finite element model. Numerous thermomechanical finite element simulations were carried out to obtain a database for training and validation of the network. The input variables were initial thickness, thickness reduction, initial temperature of the plate, friction coefficient in the contact area, and rolling speed. The optimal ANN model was obtained after repeated training and studying of the samples. The trained network gave satisfactory results when comparing the ANN predictions and FEM simulation results. A comprehensive validation of the prediction model is presented. The resulting ANN model was found to be suitable for online control and rolling schedule optimization in the hot rolling process of Mg alloy plate.
机译:组合有限元方法(FEM)与人工神经网络(ANN)的计算模型是开发的,以预测MG合金板的热轧中的滚动力。 将FEM结果与实验数据进行比较,以验证有限元模型的准确性。 进行了许多热机械有限元模拟,以获得用于培训和验证网络的数据库。 输入变量是初始厚度,厚度减小,板的初始温度,接触面积中的摩擦系数和滚动速度。 在重复训练和研究样品后获得最佳ANN模型。 在比较ANN预测和FEM模拟结果时,训练的网络在比较时令人满意的结果。 提出了预测模型的全面验证。 发现得到的ANN模型适用于MG合金板的热轧过程中的在线控制和滚动时间表优化。

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