Prediction of Springback Behavior of Vee Bending Process of AA5052 Aluminum Alloy Sheets Using Machine Learning

被引:0
|
作者
Asmael, Mohammed [1 ]
Fubara, OtonyeTekena [1 ]
Nasir, Tauqir [2 ]
机构
[1] Eastern Mediterranean Univ, Dept Mech Engn, North Cyprus Via Mersin 10, Famagusta, Turkiye
[2] Univ Sialkot, Dept Mech Engn Technol, Sialkot, Punjab, Pakistan
来源
JORDAN JOURNAL OF MECHANICAL AND INDUSTRIAL ENGINEERING | 2023年 / 17卷 / 01期
关键词
Aluminum sheet; Vee bending; Springback; ANOVA; Multiple linear regression; Artificial neural network; CYCLIC TENSION-COMPRESSION; STIR WELDING PROCESS; FINITE-ELEMENT; OPTIMIZATION; PARAMETERS; TAGUCHI; MODEL; REDUCTION; METALS; PULSE;
D O I
暂无
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
This study explores the effect of Vee bending process parameter on the springback (SB) behavior of aluminum (AA5052) alloy at sheet thickness of (2 and 3mm) with die-opening (22, 35, and 50 mm) and punch-holding time (0, 5 and 10 second) which were experimentally examined. Furthermore, to see the relative effect of process parameter on SB behavior, a qualitative approach of analysis of variance (ANOVA) was used, whereas multi linear regression (MLR) and artificial neural network (ANN) were applied to optimize the SB behavior on specified process parameters. The experimental results revealed that as punch holding time and sheet thickness increase, SB behavior reduced, whereas in case of die opening, opposite phenomena observed. ANOVA results revealed that punch-holding time had the greatest effect on SB, followed by die opening and sheet thickness. Two-way parametric interactional effects between punch-holding time and dieopening had a significant effect on SB behavior. By contrast, the interactional effects of sheet thickness were insignificant. The comparative study of MLR and ANN shows that The ANN has better (99% SB predictability) as compared to MLR (73% SB Predictability). Furthermore, the predicted results of both models were compared with actual experimental results. It was observed that the predicted results were approximately near with actual measurements, whereas the performance of MLR and ANN model were measured from sum of absolute error and the sum of the absolute error of ANN was about 12% of that of MLR model. Therefore, ANN produced a superior SB prediction performance compared with MLR. This work demonstrates the formability of AA5052 aluminum alloy in cold work where Vee bending was performed with a punch radius of 0.8 mm.The bend specimens showed no cracks, checking, and surface roughness. (c) 2023 Jordan Journal of Mechanical and Industrial Engineering. All rights reserved
引用
收藏
页码:1 / 14
页数:14
相关论文
共 50 条
  • [31] Prediction of tensile behavior of FS welded AA7039 using machine learning
    Verma, Shubham
    Misra, Joy Prakash
    Singh, Jaspreet
    Batra, Usha
    Kumar, Yogesh
    MATERIALS TODAY COMMUNICATIONS, 2021, 26
  • [32] The Effect of Casting Speed and the Fraction of Al5%Ti1%B Inoculant on the Microstructure and Mechanical Properties of the AA5052 Aluminum Alloy Produced by the Direct Chill Process
    de Faria, Geraldo Lucio
    Leite, Anderson Santos
    MATERIALS RESEARCH-IBERO-AMERICAN JOURNAL OF MATERIALS, 2018, 21 (02):
  • [33] Formability Prediction Using Machine Learning Combined with Process Design for High-Drawing-Ratio Aluminum Alloy Cups
    Hwang, Yeong-Maw
    Ho, Tsung-Han
    Huang, Yung-Fa
    Chen, Ching-Mu
    MATERIALS, 2024, 17 (16)
  • [34] Predicting Flow Stress Behavior of an AA7075 Alloy Using Machine Learning Methods
    Decke, Jens
    Engelhardt, Anna
    Rauch, Lukas
    Degener, Sebastian
    Sajadifar, Seyed Vahid
    Scharifi, Emad
    Steinhoff, Kurt
    Niendorf, Thomas
    Sick, Bernhard
    CRYSTALS, 2022, 12 (09)
  • [35] Prediction of electrochemical corrosion behavior of magnesium alloy using machine learning methods
    Moses, Atwakyire
    Chen, Ding
    Wan, Peng
    Wang, Siyuan
    MATERIALS TODAY COMMUNICATIONS, 2023, 37
  • [36] Prediction of Bending Force in the Hot Strip Rolling Process Using Multilayer Extreme Learning Machine
    Wu, Yan
    Ni, Hongchao
    Li, Xu
    Luan, Feng
    He, Yaodong
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2021, 2021 (2021)
  • [37] Thick anisotropy analysis for AA7B04 aluminum plate using CPFEM and its application for springback prediction in multi-point bending
    Liu, Chunguo
    Li, Ming
    Yue, Tao
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2021, 115 (04): : 1139 - 1153
  • [38] Thick anisotropy analysis for AA7B04 aluminum plate using CPFEM and its application for springback prediction in multi-point bending
    Chunguo Liu
    Ming Li
    Tao Yue
    The International Journal of Advanced Manufacturing Technology, 2021, 115 : 1139 - 1153
  • [39] Experimental Analysis on Bending Behavior of Non-Alloy Carbon Steel Sheets Using Laser-Forming Process
    Abedinzadeh, Reza
    Sattari, Mehdi
    Toghraie, Davood
    STEEL RESEARCH INTERNATIONAL, 2022, 93 (07)
  • [40] The prediction of part thickness using machine learning in aluminum hot stamping process with partition temperature control
    Hanrong Cai
    Wenchao Xiao
    Kailun Zheng
    The International Journal of Advanced Manufacturing Technology, 2022, 119 : 3891 - 3902