Distributed Physics-Informed machine learning strategies for two-phase flows

被引:2
|
作者
Radhakrishnan, Gokul [1 ]
Pattamatta, Arvind [1 ]
Srinivasan, Balaji [1 ,2 ]
机构
[1] Indian Inst Technol Madras, Dept Mech Engn, Chennai, India
[2] Wadhwani Sch Data Sci & AI, Chennai, India
关键词
Two-phase flows; Deep Neural Networks; Physics Informed Neural Networks; Distributed Learning Machines; INVERSE PROBLEMS; NEURAL-NETWORKS; LEVEL SET; COMPUTATIONS; VOLUME;
D O I
10.1016/j.ijmultiphaseflow.2024.104861
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
This study delves into applying Distributed Learning Machines (DLM), a subset of Physics-Informed Neural Networks (PINN), in tackling benchmark challenges within two-phase flows. Specifically, two variants of DLM, namely Distributed Physics-Informed Neural Networks (DPINN) and Transfer Physics-Informed Neural Networks (TPINN), are studied. The DLM architecture strategically divides the global domain into distinct non- overlapping sub-domains, with interconnected solutions facilitated by interface conditions embedded in the loss function. Forward and inverse benchmark problems in two-phase flows are explored: (a) bubble in a reversing vortex and (b) Bubble Rising under Buoyancy. The Volume of Fluid (VOF) method handles interface transport in both scenarios, with the inverse problem incorporating interface-position data during the training phase. The forward problem highlights the effectiveness of DPINN in capturing the interface using a simple transport equation. The distinctive contribution of this work lies in its exploration of the inverse problem, offering insights into the scalability of distributed architectures when dealing with a system of governing equations. Following the validation of an initial PINN model against Computational Fluid Dynamics (CFD) data, the study extends to DPINN and TPINN. A parametric study optimizes network hyperparameters, emphasizing the regularization of loss terms within the DPINN loss function. A self-adaptive weighting strategy based on a Gaussian probabilistic model dynamically adjusts loss weights during training to overcome challenges associated with manual parameter tuning. The evaluation of accuracy against CFD data and published results underscore the efficacy of DLMs in addressing two-phase flow problems. Additionally, the computational efficiency of distributed networks is explored compared to traditional PINNs.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Physics-informed neural networks for heat transfer prediction in two-phase flows
    Jalili, Darioush
    Jang, Seohee
    Jadidi, Mohammad
    Giustini, Giovanni
    Keshmiri, Amir
    Mahmoudi, Yasser
    INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2024, 221
  • [2] Physics-informed neural networks for two-phase film boiling heat transfer
    Jalili, Darioush
    Mahmoudi, Yasser
    INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2025, 241
  • [3] Physics-informed machine learning
    Karniadakis, George Em
    Kevrekidis, Ioannis G.
    Lu, Lu
    Perdikaris, Paris
    Wang, Sifan
    Yang, Liu
    NATURE REVIEWS PHYSICS, 2021, 3 (06) : 422 - 440
  • [4] Physics-Informed Machine Learning for metal additive manufacturing
    Farrag, Abdelrahman
    Yang, Yuxin
    Cao, Nieqing
    Won, Daehan
    Jin, Yu
    PROGRESS IN ADDITIVE MANUFACTURING, 2025, 10 (01) : 171 - 185
  • [5] Modeling two-phase flows with complicated interface evolution using parallel physics-informed neural networks
    Qiu, Rundi
    Dong, Haosen
    Wang, Jingzhu
    Fan, Chun
    Wang, Yiwei
    PHYSICS OF FLUIDS, 2024, 36 (09)
  • [6] A Taxonomic Survey of Physics-Informed Machine Learning
    Pateras, Joseph
    Rana, Pratip
    Ghosh, Preetam
    APPLIED SCIENCES-BASEL, 2023, 13 (12):
  • [7] Physics-Informed Machine Learning Part I: Different Strategies to Incorporate Physics into Engineering Problems
    Tronci, Eleonora Maria
    Downey, Austin R. J.
    Mehrjoo, Azin
    Chowdhury, Puja
    Coble, Daniel
    DATA SCIENCE IN ENGINEERING, VOL. 10, IMAC 2024, 2025, : 1 - 6
  • [8] Physics-informed deep learning for incompressible laminar flows
    Rao, Chengping
    Sun, Hao
    Liu, Yang
    THEORETICAL AND APPLIED MECHANICS LETTERS, 2020, 10 (03) : 207 - 212
  • [9] Inferring incompressible two-phase flow fields from the interface motion using physics-informed neural networks
    Buhendwa, Aaron B.
    Adami, Stefan
    Adams, Nikolaus A.
    MACHINE LEARNING WITH APPLICATIONS, 2021, 4
  • [10] Physics-informed machine learning for grade prediction in froth flotation
    Nasiri, Mahdi
    Iqbal, Sahel
    Sarkka, Simo
    MINERALS ENGINEERING, 2025, 227