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Prediction of springback in the air V-bending of metallic sheets

机译:金属板空气V型空气中回弹的预测

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Springback is a critical phenomenon in design and analysis of sheet metal forming process of metallic sheets.An accurate prediction of elastic recovery of material allows to design forming tools which take into account springback compensation.Springback is influenced by many factors including mechanical properties of material,friction conditions,temperature and geometry of bending die.In this paper,the investigations are focused on the analysis of an intelligent air bending process using an artificial neural network(ANN).The air bending experiments were carried out in a designed semi closed 90° V-shaped die.The tests were conducted on three grades of sheet metals: aluminium 1070,brass CuZn37 and deep-drawing quality steel sheet DC04.The results of experimental tests were used as a training set for back-propagation learning of a multilayer artificial network built in Statistica Neural Network program.For all materials tested,an increase of the springback coefficient is observed when the bend angle increases.The results of neural prediction are in a good agreement with the experiments.The correlation coefficient of ANN prediction to the experimental results is equal to about 0.99.
机译:回弹是在设计和金属片成形的材料的弹性恢复允许设计的成形工具,其采取金属sheets.An准确预测的过程的分析的关键现象考虑回弹compensation.Springback通过许多因素,包括材料的机械性能的影响,摩擦条件,温度和弯曲die.In本文的几何形状,调查是集中于使用.The空气弯曲实验在设计半进行封闭90人工神经网络(ANN)的智能空气弯曲过程的分析° V形die.The测试在三个等级片金属进行:铝1070,实验测试黄铜CuZn37和深拉优质钢板DC04.The结果作为用于多层人造的反向传播学习的训练集网络建于STATISTICA神经网络program.For所有材料进行测试,增加了回弹系数的观察,当弯曲角度increases.The神经预测的结果与ANN预测的experiments.The相关系数实验结果吻合良好等于约0.99。

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