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Prediction Of Springback In Wipe-bending Process Of Sheet Metal Using Neural Network

机译:基于神经网络的钣金擦拭弯曲回弹预测

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摘要

The wipe-bending is one of processes the most frequently used in the sheet metal product industry. Furthermore, the springback of sheet metal, which is defined as elastic recovery of the part during unloading, should be taken into consideration so as to produce bent sheet metal parts within acceptable tolerance limits. Springback is affected by the factors such as sheet thickness, tooling geometry, lubrication conditions, and material properties and processing parameters. In this paper, the prediction model of spring-back in wipe-bending process was developed using artificial neural network (ANN) approach. Here, several numerical simulations using finite element method (FEM) were performed to obtain the teaching data of neural network. The learned neural network is numerically tested and can be easily implemented springback prediction for new cases.
机译:擦弯是钣金产品行业中最常用的工艺之一。此外,应考虑钣金的回弹,即在卸载过程中零件的弹性回复,以便在可接受的公差范围内生产弯曲的钣金零件。回弹受诸如板材厚度,模具几何形状,润滑条件以及材料特性和加工参数等因素的影响。本文采用人工神经网络(ANN)方法建立了擦拭弯曲回弹的预测模型。在此,使用有限元方法(FEM)进行了几次数值模拟,以获得神经网络的教学数据。对学习的神经网络进行了数值测试,可以轻松地对新情况进行回弹预测。

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