An inverse method for automatic determination of material models for metal cutting based on multi-objective optimization

被引:0
|
作者
Hui Liu
Anna Kibireva
Markus Meurer
Thomas Bergs
机构
[1] Laboratory for Machine Tools and Production Engineering (WZL) of RWTH Aachen University,
[2] Fraunhofer Institute for Production Technology IPT,undefined
关键词
Cutting simulation; Material model; Multi-objective optimization; Coupled Eulerian-Lagrangian; AISI 1045; X30CrMoN15-1;
D O I
暂无
中图分类号
学科分类号
摘要
Cutting simulation is a crucial tool that enables engineers and operators to optimize machining processes virtually, before producing physical parts. The accuracy of these simulations relies heavily on validated models, encompassing both friction and material parameters. The prevalent technique for calibrating material models in cutting simulations is the inverse method. This state-of-the-art approach indirectly determines model parameters by comparing simulated outcomes with experimental data. However, the manual calibration process can be complex and time-consuming due to the intricacies of numerical simulation setups and the abundance of material model parameters. To address these challenges, this paper presents a novel fully-automated calibration approach utilizing multi-objective optimization algorithms. This approach integrates a modular design, simplifying the calibration process and enabling automatic calibration of any model parameters within cutting simulations. The approach has been successfully applied to calibrate the model parameters of AISI 1045 and X30CrMoN15-1 materials. Moreover, through a comparison of various optimization algorithms, this paper underscores the efficiency of the swarm optimizer in calibrating model parameters, particularly in scenarios with restricted computational resources.
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页码:3353 / 3374
页数:21
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