Physics-informed machine learning of redox flow battery based on a two-dimensional unit cell model

被引:4
|
作者
Chen, Wenqian [1 ]
Fu, Yucheng [1 ]
Stinis, Panos [1 ]
机构
[1] Pacific Northwest Natl Lab, Adv Comp Math & Data Div, Richland, WA 99354 USA
关键词
Redox flow battery; PINN; Machine learning; Electrochemical; 3-DIMENSIONAL MODEL; NEURAL-NETWORK; PERFORMANCE; STATE; TRANSIENT; TRANSPORT;
D O I
10.1016/j.jpowsour.2023.233548
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
In this paper, we present a physics-informed neural network (PINN) approach for predicting the performance of an all-vanadium redox flow battery, with its physics constraints enforced by a two-dimensional (2D) mathematical model. The 2D model, which includes 6 governing equations and 24 boundary conditions, provides a detailed representation of the electrochemical reactions, mass transport and hydrodynamics occurring inside the redox flow battery. To solve the 2D model with the PINN approach, a composite neural network is employed to approximate species concentration and potentials; the input and output are normalized according to prior knowledge of the battery system; the governing equations and boundary conditions are first scaled to an order of magnitude around 1, and then further balanced with a self-weighting method. numerical results show that the PINN is able to predict cell voltage correctly, but the prediction of potentials shows a constant-like shift. To fix the shift, the PINN is enhanced by further constrains derived from current collector boundary. Finally, we show that the enhanced PINN can be even further improved if a small number of labeled data is available.
引用
下载
收藏
页数:11
相关论文
共 50 条
  • [41] Flow Pattern Transition in Pipes Using Data-Driven and Physics-Informed Machine Learning
    Quintino, Andre Mendes
    da Rocha, Davi Lotfi Lavor Navarro
    Fonseca Junior, Roberto
    Rodriguez, Oscar Mauricio Hernandez
    JOURNAL OF FLUIDS ENGINEERING-TRANSACTIONS OF THE ASME, 2021, 143 (03):
  • [42] Unsupervised Denoising and Super-Resolution of Vascular Flow Data by Physics-Informed Machine Learning
    Sautory, Theophile
    Shadden, Shawn C.
    JOURNAL OF BIOMECHANICAL ENGINEERING-TRANSACTIONS OF THE ASME, 2024, 146 (09):
  • [43] Machine learning for physics-informed generation of dispersed multiphase flow using generative adversarial networks
    Siddani, B.
    Balachandar, S.
    Moore, W. C.
    Yang, Y.
    Fang, R.
    THEORETICAL AND COMPUTATIONAL FLUID DYNAMICS, 2021, 35 (06) : 807 - 830
  • [44] Machine learning for physics-informed generation of dispersed multiphase flow using generative adversarial networks
    B. Siddani
    S. Balachandar
    W. C. Moore
    Y. Yang
    R. Fang
    Theoretical and Computational Fluid Dynamics, 2021, 35 : 807 - 830
  • [45] Recent development in two-dimensional material-based membranes for redox flow battery
    Yuan, Jiashu
    Xia, Yonggao
    Chen, Xiaoping
    Zhao, Yicheng
    Li, Yongdan
    CURRENT OPINION IN CHEMICAL ENGINEERING, 2022, 38
  • [46] A Novel Neural-Network Device Modeling Based on Physics-Informed Machine Learning
    Kim, Bokyeom
    Shin, Mincheol
    IEEE TRANSACTIONS ON ELECTRON DEVICES, 2023, 70 (11) : 6021 - 6025
  • [47] Long term evolution analysis of complex systems based on physics-informed machine learning
    Cao, Rui
    Liu, Yan-Bin
    Yi, Yang
    Kongzhi Lilun Yu Yingyong/Control Theory and Applications, 2024, 41 (11): : 2041 - 2052
  • [48] Data-driven machine learning approach based on physics-informed neural network for population balance model
    Ishtiaq Ali
    Advances in Continuous and Discrete Models, 2025 (1):
  • [49] Physics-informed linear regression is competitive with two Machine Learning methods in residential building MPC
    Buenning, Felix
    Huber, Benjamin
    Schalbetter, Adrian
    Aboudonia, Ahmed
    Heer, Philipp
    Smith, Roy S.
    Lygeros, John
    Hudoba de Badyn, Mathias
    APPLIED ENERGY, 2022, 310
  • [50] MODEL CALIBRATION FOR DETONATION PRODUCTS: A PHYSICS-INFORMED, TIME-DEPENDENT SURROGATE METHOD BASED ON MACHINE LEARNING
    Zhang, J.
    Yin, J.
    Wang, R.
    Chen, J.
    INTERNATIONAL JOURNAL FOR UNCERTAINTY QUANTIFICATION, 2020, 10 (03) : 277 - 296