首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Extrusion load prediction of gear-like profile for different die geometries using ANN and FEM with experimental verification
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Extrusion load prediction of gear-like profile for different die geometries using ANN and FEM with experimental verification

机译:使用ANN和FEM并通过实验验证来预测不同模具几何形状的齿轮状轮廓的挤压负荷

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摘要

This paper deals with the extrusion of gear-like profiles and uses of finite element method (FEM) and artificial neural network (ANN) to predict the extrusion load. In the study, gear-like components has been manufactured by forward extrusion for the AA1070 aluminum alloy and the process was simulated by using a DEFORM-3D software package to establish a database in order to provide the data for ANN modeling. Serious experiments were performed for only one die set and four teeth gear profile to obtain data for comparing with DEFORM-3D results. After verifying a highly appropriate FEM simulation with the experiment at the same conditions, Results were enhanced for different die lengths, extrusion ratios, and two extra teeth number as three and six using FEM simulations. Subsequently, the data from the performed FEM simulations were submitted for the best obtained ANN model. Finally, a good agreement between FE-simulated and ANN-predicted results was obtained. The proposed ANN model is found to be useful in predicting the forming load of the different die set variations based on the reliable test data.
机译:本文涉及齿轮轮廓的挤压,并使用有限元方法(FEM)和人工神经网络(ANN)来预测挤压载荷。在这项研究中,通过向前挤压制造AA1070铝合金的齿轮状零件,并通过使用DEFORM-3D软件包建立数据库来模拟该过程,以便为ANN建模提供数据。仅对一组模具和四个齿轮的齿廓进行了认真的实验,以获得与DEFORM-3D结果进行比较的数据。在相同条件下通过实验验证了非常合适的FEM仿真之后,使用FEM仿真可以提高不同模具长度,挤压比以及两个额外的齿数(分别为三个和六个)的结果。随后,针对最佳获得的ANN模型,提交了来自执行的FEM仿真的数据。最终,在有限元模拟结果和人工神经网络预测结果之间取得了良好的一致性。发现所提出的人工神经网络模型可用于基于可靠的测试数据来预测不同模具变化的成型负荷。

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