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Using The Finite Element Method And Artificial Neural Networks To Predict Ductile Fracture In Cold Forming Processes

机译:使用有限元方法和人工神经网络预测冷成型过程中的延性骨折

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Apart from the calculation of the plastic fonnability of metals the prediction of ductile cracks in cold forming processes is very important in order to design these processes efficiently.Therefore,many crack criteria have been developed and implemented in several FEM Programs.These criteria scale the crack prediction down to one value and they are qualified to detect the most endangered areas occurring cracks during the forming process quite well.All these criteria have two significant disadvantages:on one hand none of these criteria consider the whole forming history and on the other hand the detected critical value is not applicable to other forming processes.Therefore a new method to predict ductile fracture in cold forming processes has been developed.Various upsetting,bending and extrusion tests were designed in order to provoke a failure during the forming process.All these processes were modelled by means of the Finite Element Method to acquire the whole forming history(including the first principle stress,the equivalent stress and the equivalent strain starting with the first deformation to the first crack occurrence)for the area where the first fracture occurs.Basal in the results way a database with forming histories which all will lead to an failure during a forming process was built up.This database is used to train an artificial neural network.The artificial neural network will be able to predict a failure for new forming histories.The paper gives an overview over the use of the artificial neural network,the calculation of the forming histories and the used forming processes as well as the interaction between the Finite Element Method and the artificial neural network.
机译:除了计算金属的塑料性使能的计算外,冷成型过程中的延性裂缝的预测是非常重要的,以便有效地设计这些过程。因此,在几个有限元计划中已经开发并实施了许多裂缝标准。这些标准缩放了裂缝预测到一个值,它们有资格检测成型过程中发生裂缝的最濒危区域。所有这些标准有两个重要的缺点:一方面,这些标准都不考虑整个形成历史,另一方面都认为整个成型历史上都没有检测到的临界值不适用于其他成形过程。因此,已经开发了一种新方法来预测冷成型过程中的延展性裂缝。设计了镦粗,弯曲和挤出测试,以在成型过程中引发失败。所有这些过程通过有限元方法进行建模,以获取整个成形历史(包括NG第一个原理应力,等效应力和等效应变从第一变形到第一裂缝发生的第一个变形)对于第一次裂缝发生的区域。结果方式与形成历史的数据库,所有者都会导致失败在构建过程期间建立起来。该数据库用于训练人工神经网络。人工神经网络将能够预测新的形成历史的失败。本文概述了人工神经网络的使用,计算历史的计算和使用的成形过程以及有限元方法与人工神经网络之间的相互作用。

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