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Sensitivity analysis based preform die shape design for net-shape forging

机译:基于灵敏度分析的瓶坯模具形状设计

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A sensitivity analysis method for preform die shape design in net-shape forging processes is developed in this paper using the rigid viscoplastic finite element method. The preform die shapes are represented by cubic B-spline curves. The control points or coefficients of B-spline are used as the design variables. The optimization problem is to minimize the zone where the realized and desired final forging shapes do not coincide. The sensitivities of the objective function, nodal coordinates and nodal velocities with respect to the design variables are developed in detail. A procedure for computing the sensitivities of history-dependent functions is presented. The remeshing procedure and the interpolation/transfer of the history-dependent parameters, such as effective Strain, are stated. The procedures of sensitivity analysis based preform die design are also described. In addition, a method for the adjustment of the volume loss resulting from the finite element analysis is given in order to make the workpiece volume consistent in each optimization iteration. The method developed in this paper is used to design the preform die shape of H-shaped forging processes, including plane strain and axisymmetric deformations. The results show that a flashless forging with a complete die fill is realized using the optimized preform die shape.
机译:本文采用刚性粘塑性有限元方法,开发了一种用于网状锻造过程中瓶坯模具形状设计的灵敏度分析方法。预成型模具的形状由三次B样条曲线表示。 B样条曲线的控制点或系数用作设计变量。优化问题是将已实现的锻造形状与期望的最终锻造形状不一致的区域最小化。详细阐述了目标函数,节点坐标和节点速度相对于设计变量的敏感性。提出了一种计算历史相关功能的敏感性的过程。说明了重新划分过程以及依赖历史的参数(例如有效应变)的内插/传递。还介绍了基于灵敏度分析的瓶坯模具设计程序。此外,给出了一种用于调整由有限元分析导致的体积损失的方法,以使每次优化迭代中的工件体积保持一致。本文开发的方法用于设计H形锻造工艺的预成型模具形状,包括平面应变和轴对称变形。结果表明,使用优化的预成型模具形状可以实现具有完整模具填充的无飞边锻造。

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