Industry 4.0 Foundry Data Management and Supervised Machine Learning in Low-Pressure Die Casting Quality Improvement

被引:25
作者
Uyan, Tekin C. [1 ]
Silva, Maria Santos [1 ]
Vilaca, Pedro [1 ]
Otto, Kevin [2 ]
Armakan, Elvan [3 ]
机构
[1] Aalto Univ, Dept Mech Engn, Puumiehenkuja 3, Espoo 02150, Finland
[2] Univ Melbourne, Dept Mech Engn, Melbourne, Vic 3000, Australia
[3] Cevher Wheels, TR-35411 Izmir, Turkey
关键词
low-pressure die casting; machine learning; alloy wheels; industry; 4; 0; smart foundry; sustainable metals processing; PROCESS PARAMETERS; INTELLIGENT SYSTEM; POROSITY FORMATION; SHAPLEY VALUE; PREDICTION; ALLOY; ALGORITHM; WHEEL; A356; OPTIMIZATION;
D O I
10.1007/s40962-022-00783-z
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
Low-pressure die cast (LPDC) is widely used in high performance, precision aluminum alloy automobile wheel castings, where defects such as porosity voids are not permitted. The quality of LPDC parts is highly influenced by the casting process conditions. A need exists to optimize the process variables to improve the part quality against difficult defects such as gas and shrinkage porosity. To do this, process variable measurements need to be studied against occurrence rates of defects. In this paper, industry 4.0 cloud-based systems are used to extract data. With these data, supervised machine learning classification models are proposed to identify conditions that predict defectives in a real foundry Aluminum LPDC process. The root cause analysis is difficult, because the rate of defectives in this process occurred in small percentages and against many potential process measurement variables. A model based on the XGBoost classification algorithm was used to map the complex relationship between process conditions and the creation of defective wheel rims. Data were collected from a particular LPDC machine and die mold over three shifts and six continuous days. Porosity defect occurrence rates could be predicted using 36 features from 13 process variables collected from a considerably small sample (1077 wheels) which was highly skewed (62 defectives) with 87% accuracy for good parts and 74% accuracy for parts with porosity defects. This work was helpful in assisting process parameter tuning on new product pre-series production to lower defectives.
引用
收藏
页码:414 / 429
页数:16
相关论文
共 62 条
[1]   A COMPARATIVE STUDY OF POROSITY AND PORE MORPHOLOGY IN A DIRECTIONALLY SOLIDIFIED A356 ALLOY [J].
Akhtar, S. ;
Arnberg, L. ;
Di Sabatino, M. ;
Dispinar, D. ;
Syvertsen, M. .
INTERNATIONAL JOURNAL OF METALCASTING, 2009, 3 (01) :39-52
[2]   Predicting the Tool Wear of a Drilling Process Using Novel Machine Learning XGBoost-SDA [J].
Alajmi, Mahdi S. ;
Almeshal, Abdullah M. .
MATERIALS, 2020, 13 (21) :1-16
[3]  
[Anonymous], 2015, E15515 ASTM ASTM INT
[4]  
Bergstra J., IN PRESS
[5]  
Blondheim D., 2021, UTILIZING MACHINE LE
[6]   Improving Manufacturing Applications of Machine Learning by Understanding Defect Classification and the Critical Error Threshold [J].
Blondheim, David, Jr. .
INTERNATIONAL JOURNAL OF METALCASTING, 2022, 16 (02) :502-520
[7]   Macro Porosity Formation: A Study in High Pressure Die Casting [J].
Blondheim, David, Jr. ;
Monroe, Alex ;
Blondheim, David ;
Monroe, Alex .
INTERNATIONAL JOURNAL OF METALCASTING, 2022, 16 (01) :330-341
[8]  
Blondheim Jr D., 2019, NADCA DE CASTING ENG, P14
[9]   Prediction of weld bead geometry of MAG welding based on XGBoost algorithm [J].
Chen, Kai ;
Chen, Huabin ;
Liu, Liang ;
Chen, Shanben .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 101 (9-12) :2283-2295
[10]   XGBoost: A Scalable Tree Boosting System [J].
Chen, Tianqi ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :785-794