CoolPINNs: A physics-informed neural network modeling of active cooling in vascular systems

被引:5
|
作者
Jagtap, Nimish, V [1 ]
Mudunuru, M. K. [2 ]
Nakshatrala, K. B. [3 ]
机构
[1] Univ Houston, Dept Mech Engn, Houston, TX 77204 USA
[2] Pacific Northwest Natl Lab, Earth Syst Sci Div, Richland, WA 99352 USA
[3] Univ Houston, Dept Civil & Environm Engn, Houston, TX 77204 USA
关键词
Scientific machine learning (SciML); Physics -informed neural networks (PINNs); Thermal regulation; Microvasculatures; Active cooling; Inverse problems; DERIVATIVE BOUNDARY-CONDITIONS; MICROVASCULAR NETWORKS; THERMAL REGULATION; ELEMENT-METHOD; OBLIQUE; TRANSPORT; DESIGN;
D O I
10.1016/j.apm.2023.04.020
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Emerging technologies like hypersonic aircraft, space exploration vehicles, and batteries avail fluid circulation in embedded microvasculatures for efficient thermal regulation. Modeling is vital during the design and operational phases of these engineered systems. However, many challenges exist in developing a modeling framework. What is lacking is an accurate framework that (i) captures sharp jumps in the thermal flux across complex vasculature layouts, (ii) deals with oblique derivatives (involving tangential and normal components), (iii) handles nonlinearity because of radiative heat transfer, (iv) provides a high-speed forecast for real-time monitoring, and (v) facilitates robust inverse modeling. This paper addresses these challenges by availing the power of physics-informed neural networks (PINNs). We develop a fast, reliable, and accurate Scientific Machine Learning (SciML) framework for vascular-based thermal regulation-called CoolPINNs: a PINNs-based modeling framework for active cooling. The proposed mesh-less framework elegantly overcomes all the mentioned challenges. The significance of the reported research is multi-fold. First , the framework is valuable for real-time monitoring of thermal regulatory systems because of rapid forecasting. Second , researchers can address complex thermoregulation designs since the approach is meshless. Finally , the framework facilitates systematic parameter identification and inverse modeling studies, perhaps the most significant utility of the current framework.
引用
收藏
页码:265 / 287
页数:23
相关论文
共 50 条
  • [31] A physics-informed neural network for Kresling origami structures
    Liu, Chen-Xu
    Wang, Xinghao
    Liu, Weiming
    Yang, Yi-Fan
    Yu, Gui-Lan
    Liu, Zhanli
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2024, 269
  • [32] Realizing the Potential of Physics-Informed Neural Network in Modelling
    Kheirandish, Zahra
    Schulz, Wolfgang
    JOURNAL OF LASER MICRO NANOENGINEERING, 2024, 19 (03): : 209 - 213
  • [33] Parareal with a Physics-Informed Neural Network as Coarse Propagator
    Ibrahim, Abdul Qadir
    Goetschel, Sebastian
    Ruprecht, Daniel
    EURO-PAR 2023: PARALLEL PROCESSING, 2023, 14100 : 649 - 663
  • [34] Physics-informed neural network for diffusive wave model
    Hou, Qingzhi
    Li, Yixin
    Singh, Vijay P.
    Sun, Zewei
    JOURNAL OF HYDROLOGY, 2024, 637
  • [35] Outlier-resistant physics-informed neural network
    Duarte, D. H. G.
    Lima, P. D. S. de
    Araujo, J. M. de
    PHYSICAL REVIEW E, 2025, 111 (02)
  • [36] Physics-informed deep neural network for image denoising
    Xypakis, Emmanouil
    De Turris, Valeria
    Gala, Fabrizio
    Ruocco, Giancarlo
    Leonetti, Marco
    OPTICS EXPRESS, 2023, 31 (26) : 43838 - 43849
  • [37] Physics-informed neural network for polarimetric underwater imaging
    Hu, Haofeng
    Han, Yilin
    Li, Xiaobo
    Jiang, Liubing
    Che, Li
    Liu, Tiegen
    Zhai, Jingsheng
    OPTICS EXPRESS, 2022, 30 (13) : 22512 - 22522
  • [38] Simulation-free reliability analysis with active learning and Physics-Informed Neural Network
    Zhang, Chi
    Shafieezadeh, Abdollah
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2022, 226
  • [39] Design of Turing Systems with Physics-Informed Neural Networks
    Kho, Jordon
    Koh, Winston
    Wong, Jian Cheng
    Chiu, Pao-Hsiung
    Ooi, Chin Chun
    2022 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (SSCI), 2022, : 1180 - 1186
  • [40] Parameter estimation and modeling of nonlinear dynamical systems based on Runge-Kutta physics-informed neural network
    Zhai, Weida
    Tao, Dongwang
    Bao, Yuequan
    NONLINEAR DYNAMICS, 2023, 111 (22) : 21117 - 21130