Prediction of Short-Shot Defects in Injection Molding by Transfer Learning

被引:2
|
作者
Zhou, Zhe-Wei [1 ]
Yang, Hui-Ya [1 ]
Xu, Bei-Xiu [1 ]
Ting, Yu-Hung [1 ,2 ,3 ]
Chen, Shia-Chung [1 ,2 ,3 ]
Jong, Wen-Ren [1 ,2 ,3 ]
机构
[1] Chung Yuan Christian Univ, Dept Mech Engn, Taoyuan City 320314, Taiwan
[2] Chung Yuan Christian Univ, R&D Ctr Smart Mfg, Taoyuan City 320314, Taiwan
[3] Chung Yuan Christian Univ, R&D Ctr Semicond Carrier, Taoyuan City 320314, Taiwan
来源
APPLIED SCIENCES-BASEL | 2023年 / 13卷 / 23期
关键词
BPNN; machine learning; transfer learning; injection molding; short-shots; ARTIFICIAL NEURAL-NETWORK; PROCESS PARAMETERS; OPTIMIZATION;
D O I
10.3390/app132312868
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
For a long time, the traditional injection molding industry has faced challenges in improving production efficiency and product quality. With advancements in Computer-Aided Engineering (CAE) technology, many factors that could lead to product defects have been eliminated, reducing the costs associated with trial runs during the manufacturing process. However, despite the progress made in CAE simulation results, there still exists a slight deviation from actual conditions. Therefore, relying solely on CAE simulations cannot entirely prevent product defects, and businesses still need to implement real-time quality checks during the production process. In this study, we developed a Back Propagation Neural Network (BPNN) model to predict the occurrence of short-shots defects in the injection molding process using various process states as inputs. We developed a Back Propagation Neural Network (BPNN) model that takes injection molding process states as input to predict the occurrence of short-shot defects during the injection molding process. Additionally, we investigated the effectiveness of two different transfer learning methods. The first method involved training the neural network model using CAE simulation data for products with length-thickness ratios (LT) of 60 and then applying transfer learning with real process data. The second method trained the neural network model using real process data for products with LT60 and then applied transfer learning with real process data from products with LT100. From the results, we have inferred that transfer learning, as compared to conventional neural network training methods, can prevent overfitting with the same amount of training data. The short-shot prediction models trained using transfer learning achieved accuracies of 90.2% and 94.4% on the validation datasets of products with LT60 and LT100, respectively. Through integration with the injection molding machine, this enables production personnel to determine whether a product will experience a short-shot before the mold is opened, thereby increasing troubleshooting time.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] The analysis of short shot possibility in injection molding process
    Moayyedian, Mehdi
    Abhary, Kazem
    Marian, Romeo
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2017, 91 (9-12) : 3977 - 3989
  • [2] Transfer learning to predict part quality for injection molding with recycled materials
    Chen, Jia-Chin
    Huang, Ming-Shyan
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2024, 135 (7-8) : 3241 - 3256
  • [3] Application of Machine Learning Methods for Prediction of Parts Quality in Thermoplastics Injection Molding
    Ogorodnyk, Olga
    Lyngstad, Ole Vidar
    Larsen, Mats
    Wang, Kesheng
    Martinsen, Kristian
    ADVANCED MANUFACTURING AND AUTOMATION VIII, 2019, 484 : 237 - 244
  • [4] The analysis of short shot possibility in injection molding process
    Mehdi Moayyedian
    Kazem Abhary
    Romeo Marian
    The International Journal of Advanced Manufacturing Technology, 2017, 91 : 3977 - 3989
  • [5] Transfer-Learning: Bridging the Gap between Real and Simulation Data for Machine Learning in Injection Molding
    Tercan, Hasan
    Guajardo, Alexandro
    Heinisch, Julian
    Thiele, Thomas
    Hopmann, Christian
    Meisen, Tobias
    51ST CIRP CONFERENCE ON MANUFACTURING SYSTEMS, 2018, 72 : 185 - 190
  • [6] Faults and failures prediction in injection molding process
    Nasiri, Sara
    Khosravani, Mohammad Reza
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 103 (5-8) : 2469 - 2484
  • [7] Transfer Learning Applied to Characteristic Prediction of Injection Molded Products
    Huang, Yan-Mao
    Jong, Wen-Ren
    Chen, Shia-Chung
    POLYMERS, 2021, 13 (22)
  • [8] Computational prediction of defects during injection molding in a complex part
    Fetecau, Catalin
    Stan, Felicia
    MATERIALE PLASTICE, 2007, 44 (03) : 180 - 184
  • [9] Machine Learning in Injection Molding: An Industry 4.0 Method of Quality Prediction
    Parizs, Richard Dominik
    Torok, Daniel
    Ageyeva, Tatyana
    Kovacs, Jozsef Gabor
    SENSORS, 2022, 22 (07)
  • [10] Transfer learning with artificial neural networks between injection molding processes and different polymer materials
    Lockner, Yannik
    Hopmann, Christian
    Zhao, Weibo
    JOURNAL OF MANUFACTURING PROCESSES, 2022, 73 : 395 - 408