期刊文献+

Springback Prediction and Optimization of Variable Stretch Force Trajectory in Three-dimensional Stretch Bending Process 被引量:6

Springback Prediction and Optimization of Variable Stretch Force Trajectory in Three-dimensional Stretch Bending Process
下载PDF
导出
摘要 Most of the existing studies use constant force to reduce springback while researching stretch force. However, variable stretch force can reduce springback more efficiently. The current research on springback prediction in stretch bending forming mainly focuses on artificial neural networks combined with the finite element simulation. There is a lack of springback prediction by support vector regression(SVR). In this paper, SVR is applied to predict springback in the three-dimensional stretch bending forming process, and variable stretch force trajectory is optimized. Six parameters of variable stretch force trajectory are chosen as the input parameters of the SVR model. Sixty experiments generated by design of experiments(DOE) are carried out to train and test the SVR model. The experimental results confirm that the accuracy of the SVR model is higher than that of artificial neural networks. Based on this model, an optimization algorithm of variable stretch force trajectory using particle swarm optimization(PSO) is proposed. The springback amount is used as the objective function. Changes of local thickness are applied as the criterion of forming constraints. The objection and constraints are formulated by response surface models. The precision of response surface models is examined. Six different stretch force trajectories are employed to certify springback reduction in the optimum stretch force trajectory, which can efficiently reduce springback. This research proposes a new method of springback prediction using SVR and optimizes variable stretch force trajectory to reduce springback. Most of the existing studies use constant force to reduce springback while researching stretch force. However, variable stretch force can reduce springback more efficiently. The current research on springback prediction in stretch bending forming mainly focuses on artificial neural networks combined with the finite element simulation. There is a lack of springback prediction by support vector regression(SVR). In this paper, SVR is applied to predict springback in the three-dimensional stretch bending forming process, and variable stretch force trajectory is optimized. Six parameters of variable stretch force trajectory are chosen as the input parameters of the SVR model. Sixty experiments generated by design of experiments(DOE) are carried out to train and test the SVR model. The experimental results confirm that the accuracy of the SVR model is higher than that of artificial neural networks. Based on this model, an optimization algorithm of variable stretch force trajectory using particle swarm optimization(PSO) is proposed. The springback amount is used as the objective function. Changes of local thickness are applied as the criterion of forming constraints. The objection and constraints are formulated by response surface models. The precision of response surface models is examined. Six different stretch force trajectories are employed to certify springback reduction in the optimum stretch force trajectory, which can efficiently reduce springback. This research proposes a new method of springback prediction using SVR and optimizes variable stretch force trajectory to reduce springback.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2015年第6期1132-1140,共9页 中国机械工程学报(英文版)
基金 Supported by National Technical Innovation Foundation of China(Grant No.Jilin Province 350)
关键词 springback prediction support vector regression(SVR) response surface particle swarm optimization(PSO) springback prediction,support vector regression(SVR),response surface,particle swarm optimization(PSO)
  • 相关文献

参考文献1

二级参考文献14

  • 1金朝海,周贤宾,刁可山,李晓星.铝合金型材拉弯成形回弹的有限元模拟[J].材料科学与工艺,2004,12(4):394-397. 被引量:34
  • 2马鸣图,李志刚,易红亮,向晓峰,方平.汽车轻量化及铝合金的应用[J].世界有色金属,2006(10):10-14. 被引量:35
  • 3VOLLERTSEN FRANK, SPRENGER A. Extrusion, channel, profile bending : A review[J]. Journal of Materials Processing Technology, 1999, 87(1): 1-27.
  • 4TRYLAND T, HOPPERSTAD O S, LANGSETH M. Design of experiments to identify material properties[J]. Materials andDesign, 2000, 21: 477-492.
  • 5PAULSEN F, WELO T. Cross-sectional deformations of rectangular hollow sections in bending: Part I experiments[J]. International Journal of Mechanical Sciences, 2001, 43(1): 109-129.
  • 6PAULSEN F, WELO T. Local flange bucking and its relation to elastic springback in forming of aluminum extrusions[J]. Journal of Material Technology, 1996, 60: 149-154.
  • 7UEDA M, UENO K, KOBAYASHI M. A study of springback in the stretch bending of channels[J]. Journal of Mechanical Working Technology, 1981, 5. 163-170.
  • 8CLAUSEN A H, HOPPERSTAD O S, LANGSETH OCt Stretch bending analysis of aluminum extrusion for car bumpers[J]. Journal of Materials Processing Technology, 2000, 102(1): 241-248.
  • 9MILLER J E, KYRIAKIDES S, BASTARD A H. On bend-stretch forming of aluminum extruded tubes-I: Experiments[J]. International Journal of Mechanical Sciences, 2001, 43(5): 1283-1317.
  • 10CLAUSEN HA, HOPPERSTAD O S, LANGSETH M. Sensitivity of model parameters in stretch bending of aluminum extrusions[J]. International Journal of Mechanical Sciences, 2001, 43(2): 427-453.

共引文献12

同被引文献39

引证文献6

二级引证文献43

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部