Identification of material parameters of the Gurson–Tvergaard–Needleman damage law by combined experimental, numerical sheet metal blanking techniques and artificial neural networks approach

被引:0
作者
Haykel Marouani
Hamdi Aguir
机构
[1] University of Monastir,Mechanical Engineering Laboratory, ENIM
来源
International Journal of Material Forming | 2012年 / 5卷
关键词
Blanking; Damage; Artificial neural networks; Finite elements method;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents a method for the identification of coupled damage model parameters in sheet metal blanking and a study of their sensitivity to the blanking clearance. The existing finite element models easily describe the elastoplastic behaviour occurring during the sheet metal blanking. However, the description of the damage evolution is much more delicate to appreciate. The proposed method combines finite element method (FEM) with artificial neural networks (ANN) analysis in order to identify the values of the Gurson-Tvergaard-Needleman (GTN) parameters. The blanking tests are carried out to obtain the experimental material response under loading (blanking force—blanking penetration curves). A finite element model is used to compute the load displacement curve depending on a systematic variation of GTN parameters. Via a full factorial design, a numerical database is built up and is used for the ANN training. The identification of the damage properties (for a fixed clearance) is done by minimizing the error between an experimental load displacement curve and a predicted one by the ANN function. The identified damage law parameters are validated on the other experimental configurations of blanking tests (fixed clearance, different punch velocities). Varying the blanking clearance allows us to study its impact on the damage law parameters.
引用
收藏
页码:147 / 155
页数:8
相关论文
共 45 条
[11]  
Tracey DM(1996)A unified approach for parameter identification of inelastic material models in the frame of the finite element method Comput Meth Appl Mech Eng 136 225-258
[12]  
Gurson AL(2009)Parameter identification of a non-associative elastoplastic constitutive model using ANN and multi-objective optimization Int J Mater Form 2 75-82
[13]  
Rousselier G(2010)GTN parameters identification using ANN in sheet metal blanking Int J Mater Form 3 113-116
[14]  
Eikrem PA(2009)Numerical investigations on sheet metal blanking with high speed deformation Mater Des 30 3566-3571
[15]  
Zhang ZL(1981)Influence of voids on shear band instabilities under plane strain conditions Int J Fract 17 389-407
[16]  
Østby E(2008)A phenomenological form of the q Int J Press Vessels Pip 85 199-210
[17]  
Nyhus B(2006) parameter in the Gurson model Eng Fract Mech 73 710-725
[18]  
Varvani-Farahani A(1969)Identification of ductile damage and fracture parameters from the small punch test using neural networks J Iron Steel Inst 207 181-186
[19]  
Sharma M(undefined)Comparison between a quantitative microscope and chemical methods for assessment of non-metallic inclusions undefined undefined undefined-undefined
[20]  
Kianoush MR(undefined)undefined undefined undefined undefined-undefined