Physics-informed deep learning for modelling particle aggregation and breakage processes

被引:0
|
作者
Chen, Xizhong [1 ]
Wang, Li Ge [2 ,3 ]
Meng, Fanlin [4 ]
Luo, Zheng-Hong [5 ]
机构
[1] Process and Chemical Engineering, School of Engineering, University College Cork, Cork, Ireland
[2] Process Systems Enterprise, Hammersmith, London,UK, United Kingdom
[3] Department of Chemical and Biological Engineering, University of Sheffield, UK, United Kingdom
[4] Department of Mathematical Sciences, University of Essex, Colchester,UK, United Kingdom
[5] Department of Chemical Engineering, School of Chemistry and Chemical Engineering, State Key Laboratory of Metal Matrix Composites, Shanghai Jiao Tong University, Shanghai,200240, China
来源
关键词
Particle aggregation and breakage phenomena are widely found in various industries such as chemical; agricultural and pharmaceutical processes. In this study; a physics-informed neural network is developed for solving both the forward and inverse problems of particle aggregation and breakage processes. In this method; the population balance equation is directly embedded in the loss function of a neural network so that the network can be trained efficiently and fulfil physical constraints. For the forward problems; solutions of population balance equations are obtained through the optimization of the neural network where the predictions well match the analytical solutions. In the inverse modelling; the data-driven discovery of model parameters of population balance equations is investigated. The sensitivity regarding the selection of different neural network structures is also investigated. The developed population balance equations embedded with neural network approach is promising for solving inverse problems of particle aggregation and breakage processes with noisy observation data. © 2021;
D O I
暂无
中图分类号
学科分类号
摘要
引用
收藏
相关论文
共 50 条
  • [31] Physics-informed deep learning model in wind turbine response prediction
    Li, Xuan
    Zhang, Wei
    RENEWABLE ENERGY, 2022, 185 : 932 - 944
  • [32] Phase Retrieval for Fourier THz Imaging with Physics-Informed Deep Learning
    Xiang, Mingjun
    Wang, Lingxiao
    Yuan, Hui
    Zhou, Kai
    Roskos, Hartmut G.
    2022 47TH INTERNATIONAL CONFERENCE ON INFRARED, MILLIMETER AND TERAHERTZ WAVES (IRMMW-THZ 2022), 2022,
  • [33] Physics-informed deep-learning applications to experimental fluid mechanics
    Eivazi, Hamidreza
    Wang, Yuning
    Vinuesa, Ricardo
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (07)
  • [34] A PHYSICS-INFORMED DEEP LEARNING APPROACH FOR HDGT COMPRESSOR PERFORMANCE SIMULATION
    Wei, Manman
    Jiang, Xiaomo
    Liu, Yiyang
    Ge, Xin
    PROCEEDINGS OF ASME TURBO EXPO 2024: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, GT2024, VOL 12D, 2024,
  • [35] Physics-Informed deep learning to predict flow fields in cyclone separators
    Queiroz, L. H.
    Santos, F. P.
    Oliveira, J. P.
    Souza, M. B.
    DIGITAL CHEMICAL ENGINEERING, 2021, 1
  • [36] Multi-Objective Loss Balancing for Physics-Informed Deep Learning
    Bischof, Rafael
    Kraus, Michael A.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2025, 439
  • [37] Phase-field modeling of fracture with physics-informed deep learning
    Manav, M.
    Molinaro, R.
    Mishra, S.
    De Lorenzis, L.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2024, 429
  • [38] Physics-Informed Deep Learning for Computational Elastodynamics without Labeled Data
    Rao, Chengping
    Sun, Hao
    Liu, Yang
    JOURNAL OF ENGINEERING MECHANICS, 2021, 147 (08)
  • [39] Physics-informed deep learning for structural dynamics under moving load
    Liang, Ruihua
    Liu, Weifeng
    Fu, Yuguang
    Ma, Meng
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2024, 284
  • [40] Physics-informed deep learning: A promising technique for system reliability assessment
    Zhou, Taotao
    Droguett, Enrique Lopez
    Mosleh, Ali
    APPLIED SOFT COMPUTING, 2022, 126