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Evaluation of Tube Formability in Hydroforming by Artificial Neural Network

机译:用人工神经网络评价液压成形中的管成形性能。

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During tube hydroforming, formability of stainless steel tube is often obtained by experiment or FEM simulation. In this paper, a back-propagation artificial neural network (BP-ANN) model is built to evaluate material formability in tube hydroforming. The comparison of experiment results and evaluation results indicates that the proposed ANN can accurately evaluate material formability. In the post optimization for hydroforming parameter, this proposed can be used to replace FEM simulation, and a lot of time should be saved in the search for the optimal solution. This method is also applied to predict formability of other material and different type part.
机译:在管液压成型过程中,经常通过实验或有限元模拟获得不锈钢管的可成型性。在本文中,建立了反向传播人工神经网络(BP-ANN)模型来评估管液压成形中的材料可成形性。实验结果和评估结果的比较表明,所提出的人工神经网络可以准确地评估材料的可成形性。在液压成形参数的后期优化中,该建议可以用来代替有限元模拟,并且在寻找最优解时应节省大量时间。该方法还适用于预测其他材料和不同类型零件的可成形性。

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