Optimizing data-sampling period in a machine learning-based surrogate model for powder mixing simulations

被引:0
|
作者
机构
[1] Kishida, Naoki
[2] Nakamura, Hideya
[3] Ohsaki, Shuji
[4] Watano, Satoru
基金
日本学术振兴会; 日本科学技术振兴机构;
关键词
Digital elevation model - Fast Fourier transforms - Mixers (machinery);
D O I
10.1016/j.powtec.2024.120584
中图分类号
学科分类号
摘要
The discrete element method (DEM) has been widely employed in computer simulations of various powder handling processes. However, it has limitations in treating long-term evolution owing to its high computational cost. To predict long-time-scale individual particle motions with low computational cost and high accuracy, we developed a machine learning-based surrogate model: a recurrent neural network with stochastically calculated random motion (RNNSR). The RNNSR learns and predicts individual particle trajectories with a much larger time step than the DEM, enabling the ultrafast computation of the time evolution of particle motions. However, its accuracy was evaluated under only one specific operating condition, leaving open the question of whether the RNNSR can predict powder mixing even at different powder flow velocities. In addition, the accuracy of the RNNSR depends on the time step of the learning data used to train the recurrent neural network. However, the criteria for an appropriate time step in RNNSR remain uncertain. Hence, this study investigated the criterion for an appropriate time step for the RNNSR and evaluated its performance at various powder flow velocities. The appropriate time step for the RNNSR was determined based on the mean period of the original particle trajectory data. The criterion for the appropriate time step was 4 % of the mean period of the original particle trajectory. The RNNSR with the optimized time step accurately predicted the powder mixing behavior, particle velocity, and granular temperature in a rotating drum mixer regardless of the drum rotation speed. © 2024 Elsevier B.V.
引用
收藏
相关论文
共 50 条
  • [31] Machine Learning-Based Adaptive Synthetic Sampling Technique for Intrusion Detection
    Zakariah, Mohammed
    AlQahtani, Salman A. A.
    Al-Rakhami, Mabrook S. S.
    APPLIED SCIENCES-BASEL, 2023, 13 (11):
  • [32] Machine Learning-Based Embedding for Discontinuous Time Series Machine Data
    Aremu, Oluseun Omotola
    Hyland-Wood, David
    McAree, Peter Ross
    2019 IEEE 17TH INTERNATIONAL CONFERENCE ON INDUSTRIAL INFORMATICS (INDIN), 2019, : 1321 - 1326
  • [33] A Machine Learning-Based Surrogate Model for the Identification of Risk Zones Due to Off-Stream Reservoir Failure
    Silva-Cancino, Nathalia
    Salazar, Fernando
    Sanz-Ramos, Marcos
    Blade, Ernest
    WATER, 2022, 14 (15)
  • [34] A Machine Learning-Based Surrogate Model for the Identification of Risk Zones due to Off-stream Reservoir Failure
    Silva Cancino, Nathalia
    Salazar, Fernando
    Sanz-Ramos, Marcos
    Blade i Castellet, Ernest
    PROCEEDINGS OF THE 39TH IAHR WORLD CONGRESS, 2022, : 4863 - 4872
  • [35] Optimizing model observer performance in learning-based CT reconstruction
    Ongie, Gregory
    Sidky, Emil Y.
    Reiser, Ingrid S.
    Pan, Xiaochuan
    MEDICAL IMAGING 2022: IMAGE PERCEPTION, OBSERVER PERFORMANCE, AND TECHNOLOGY ASSESSMENT, 2022, 12035
  • [36] A Machine Learning-Based Semantic Pattern Matching Model for Remote Sensing Data Registration
    Jaber, Mustafa Musa
    Ali, Mohammed Hasan
    Abd, Sura Khalil
    Jassim, Mustafa Mohammed
    Alkhayyat, Ahmed
    Alreda, Baraa A.
    Alkhuwaylidee, Ahmed Rashid
    Alyousif, Shahad
    JOURNAL OF THE INDIAN SOCIETY OF REMOTE SENSING, 2023, 51 (09) : 1903 - 1916
  • [37] A Machine Learning-Based Semantic Pattern Matching Model for Remote Sensing Data Registration
    Jaber, Mustafa Musa
    Ali, Mohammed Hasan
    Abd, Sura Khalil
    Jassim, Mustafa Mohammed
    Alkhayyat, Ahmed
    Alreda, Baraa A.
    Alkhuwaylidee, Ahmed Rashid
    Alyousif, Shahad
    JOURNAL OF THE INDIAN SOCIETY OF REMOTE SENSING, 2022, 50 (12) : 2303 - 2316
  • [38] Machine learning-based bladder effusion estimation model construction on intravesical pressure data
    Yuan, Gang
    Li, Yu
    Ge, Zicong
    Yang, Xiaodong
    Zheng, Jian
    Wu, Zhongyi
    Zhang, Yin
    Zhang, Wanlu
    Tang, Liangfeng
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2023, 86
  • [39] A MACHINE LEARNING-BASED PREDICTIVE MODEL FOR PROGRESSION OF KNEE OSTEOARTHRITIS FROM CLINICAL DATA
    Li, H. T.
    Chan, L.
    Wen, C.
    OSTEOARTHRITIS AND CARTILAGE, 2020, 28 : S312 - S314
  • [40] The Optimal Machine Learning-Based Missing Data Imputation for the Cox Proportional Hazard Model
    Guo, Chao-Yu
    Yang, Ying-Chen
    Chen, Yi-Hau
    FRONTIERS IN PUBLIC HEALTH, 2021, 9