Ice-flow model emulator based on physics-informed deep learning

被引:13
|
作者
Jouvet, Guillaume [1 ]
Cordonnier, Guillaume [2 ]
机构
[1] Univ Lausanne, IDYST, CH-1015 Lausanne, Switzerland
[2] Univ Cote dAzur, Inria, Sophia Antipolis, France
关键词
glacier flow; glacier modelling; glacier mechanics; ice-sheet modelling; SHEET; ALGORITHM;
D O I
10.1017/jog.2023.73
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
Convolutional neural networks (CNN) trained from high-order ice-flow model realisations have proven to be outstanding emulators in terms of fidelity and computational performance. However, the dependence on an ensemble of realisations of an instructor model renders this strategy difficult to generalise to a variety of ice-flow regimes found in the nature. To overcome this issue, we adopt the approach of physics-informed deep learning, which fuses traditional numerical solutions by finite differences/elements and deep-learning approaches. Here, we train a CNN to minimise the energy associated with high-order ice-flow equations within the time iterations of a glacier evolution model. As a result, our emulator is a promising alternative to traditional solvers thanks to its high computational efficiency (especially on GPU), its high fidelity to the original model, its simplified training (without requiring any data), its capability to handle a variety of ice-flow regimes and memorise previous solutions, and its relatively simple implementation. Embedded into the 'Instructed Glacier Model' (IGM) framework, the potential of the emulator is illustrated with three applications including a large-scale high-resolution (2400x4000) forward glacier evolution model, an inverse modelling case for data assimilation, and an ice shelf.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Surface current prediction based on a physics-informed deep learning model
    Zhang, Lu
    Duan, Wenyang
    Cui, Xinmiao
    Liu, Yuliang
    Huang, Limin
    APPLIED OCEAN RESEARCH, 2024, 148
  • [2] Physics-informed deep learning cascade loss model
    Feng, Yunyang
    Song, Xizhen
    Yuan, Wei
    Lu, Hanan
    AEROSPACE SCIENCE AND TECHNOLOGY, 2023, 134
  • [3] Physics-informed Deep Learning for Flow Modelling and Aerodynamic Optimization
    Sun, Yubiao
    Sengupta, Ushnish
    Juniper, Matthew
    2022 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (SSCI), 2022, : 1149 - 1155
  • [4] Towards physics-informed deep learning for turbulent flow prediction
    Wang, Rui
    Kashinath, Karthik
    Mustafa, Mustafa
    Albert, Adrian
    Yu, Rose
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 1457 - 1466
  • [5] SenseNet: A Physics-Informed Deep Learning Model for Shape Sensing
    Qiu, Yitao
    Arunachala, Prajwal Kammardi
    Linder, Christian
    JOURNAL OF ENGINEERING MECHANICS, 2023, 149 (03)
  • [6] Search direction optimization of power flow analysis based on physics-informed deep learning
    Li, Baoliang
    Wu, Qiuwei
    Cao, Yongji
    Li, Changgang
    INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2025, 167
  • [7] Physics-Informed Model-Based Reinforcement Learning
    Ramesh, Adithya
    Ravindran, Balaraman
    LEARNING FOR DYNAMICS AND CONTROL CONFERENCE, VOL 211, 2023, 211
  • [8] 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
  • [9] Physics-informed deep learning for traffic state estimation based on the traffic flow model and computational graph method
    Zhang, Jinlei
    Mao, Shuai
    Yang, Lixing
    Ma, Wei
    Li, Shukai
    Gao, Ziyou
    INFORMATION FUSION, 2024, 101
  • [10] Physics-informed deep learning for digital materials
    Zhang, Zhizhou
    Gu, Grace X.
    THEORETICAL AND APPLIED MECHANICS LETTERS, 2021, 11 (01)