Development of a prediction method for the hyper-elastic material model coefficient through the indentation test and machine learning

被引:0
|
作者
Doo K. [1 ]
Kim J. [1 ]
机构
[1] Department of Mechanical Engineering, Seoul National University of Science & Technology
关键词
Hyper-elastic model coefficient; Indentation test; Machine learning; Mooney-Rivlin model;
D O I
10.5302/J.ICROS.2020.20.0105
中图分类号
学科分类号
摘要
In this paper, a hyper-elastic model coefficients prediction algorithm is developed to simplify the experiment to derive the hyper-elastic model coefficients needed for nonlinear finite element analysis (FEA). In the simulations, the correlation between the hyper-elastic model coefficients and the selected measurement data is analyzed through the replicate simulation. A predictive flow graph using TensorFlow is obtained using the acquired data and machine learning techniques. Using these predictive flow graphs, the random hyper-elastic model coefficients are predicted. In addition, the model coefficients of real hyper-elastic materials are predicted using the developed algorithm. Although the accuracy of the prediction is decreased, the model coefficient prediction techniques using manipulator and machine learning algorithms show great potential. An improvement to the pressure test will be attempted in the future to increase the probability of the measuring field. © ICROS 2020.
引用
收藏
页码:907 / 915
页数:8
相关论文
共 50 条
  • [41] Development of a Nurse Turnover Prediction Model in Korea Using Machine Learning
    Kim, Seong-Kwang
    Kim, Eun-Joo
    Kim, Hye-Kyeong
    Song, Sung-Sook
    Park, Bit-Na
    Jo, Kyoung-Won
    HEALTHCARE, 2023, 11 (11)
  • [42] The Development of a Machine Learning Inpatient Acute Kidney Injury Prediction Model
    Koyner, Jay L.
    Carey, Kyle A.
    Edelson, Dana P.
    Churpek, Matthew M.
    CRITICAL CARE MEDICINE, 2018, 46 (07) : 1070 - 1077
  • [43] Development of a childhood asthma prediction model using machine learning approaches
    Kothalawala, D. M.
    Arshad, S. H.
    Holloway, J. W.
    Rezwan, F., I
    ALLERGY, 2020, 75 : 63 - 63
  • [44] Development of prediction model with machine learning in continuous twin screw granulation
    Yoo, Seung-Dong
    Kim, Ji Yeon
    Han, Sung-Kyun
    Lee, Byung-Hoon
    Choi, Du Hyung
    Park, Eun-Seok
    JOURNAL OF PHARMACEUTICAL INVESTIGATION, 2023, 53 (05) : 707 - 722
  • [45] Development of Prediction Models for Shear Strength of Rockfill Material Using Machine Learning Techniques
    Ahmad, Mahmood
    Kaminski, Pawel
    Olczak, Piotr
    Alam, Muhammad
    Iqbal, Muhammad Junaid
    Ahmad, Feezan
    Sasui, Sasui
    Khan, Beenish Jehan
    APPLIED SCIENCES-BASEL, 2021, 11 (13):
  • [46] A hybrid ensemble machine learning model for discharge coefficient prediction of side orifices with different shapes
    Deng, Yangyu
    Zhang, Di
    Zhang, Dong
    Wu, Jian
    Liu, Yakun
    FLOW MEASUREMENT AND INSTRUMENTATION, 2023, 91
  • [47] Prediction of Student Dropout in E-Learning Program Through the Use of Machine Learning Method
    Tan, Mingjie
    Shao, Peiji
    INTERNATIONAL JOURNAL OF EMERGING TECHNOLOGIES IN LEARNING, 2015, 10 (01) : 11 - 17
  • [48] Development of a prediction model on preeclampsia using machine learning-based method: a retrospective cohort study in China
    Liu, Mengyuan
    Yang, Xiaofeng
    Chen, Guolu
    Ding, Yuzhen
    Shi, Meiting
    Sun, Lu
    Huang, Zhengrui
    Liu, Jia
    Liu, Tong
    Yan, Ruiling
    Li, Ruiman
    FRONTIERS IN PHYSIOLOGY, 2022, 13
  • [49] Investigation and prediction of machining characteristics of aerospace material through WEDM process using machine learning
    Chalisgaonkar, Rupesh
    Sirohi, Sachin
    Kumar, Jatinder
    Rathore, Sachin
    INTERNATIONAL JOURNAL OF INTERACTIVE DESIGN AND MANUFACTURING - IJIDEM, 2024, : 5561 - 5581
  • [50] Development of an Efficient Electricity Consumption Prediction Model using Machine Learning Techniques
    Alraddadi, Ghaidaa Hamad
    Ben Othman, Mohamed Tahar
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2022, 13 (01) : 376 - 384