Data-driven prognostics with low-fidelity physical information for digital twin: physics-informed neural network

被引:0
|
作者
Seokgoo Kim
Joo-Ho Choi
Nam Ho Kim
机构
[1] University of Florida,Department of Mechanical and Aerospace Engineering
[2] Korea Aerospace University,Department of Aerospace and Mechanical Engineering
关键词
Physics-informed neural network; Prognostics; Uncertainty quantification; Remaining useful life;
D O I
暂无
中图分类号
学科分类号
摘要
In the absence of a high-fidelity physics-based prognostics model, data-driven prognostics methods are widely adopted. In practice, however, data-driven approaches often suffer from insufficient training data, which causes large training uncertainty that hinders the Digital twin (DT)-based decision-making. In such a case, the integration of low-fidelity physics with a data-driven method is highly demanded. This paper introduces physics-informed neural network (PINN)-based prognostics that can utilize low-fidelity physics information, such as monotonicity or the sign of curvature. Low-fidelity physics information is included as a constraint during the optimization process to reduce the training uncertainty in the neural network model by preventing unrealistic predictions. The proposed method is applied to two case studies to demonstrate the effect of reducing the prediction uncertainty and the robustness to the variability in test data. The two case studies show that PINN-based prognostics can successfully reduce the prediction uncertainty and yield more robust prognostics performance than the ordinary neural network.
引用
收藏
相关论文
共 50 条
  • [21] Data-Driven Controllability of Power Electronics Under Boundary Conditions - A Physics-Informed Neural Network Based Approach
    Sahoo, Subham
    Blaabjerg, Frede
    2023 IEEE APPLIED POWER ELECTRONICS CONFERENCE AND EXPOSITION, APEC, 2023, : 2801 - 2806
  • [22] Data-driven discovery of turbulent flow equations using physics-informed neural networks
    Yazdani, Shirindokht
    Tahani, Mojtaba
    PHYSICS OF FLUIDS, 2024, 36 (03)
  • [23] A hybrid physics-informed data-driven neural network for CO2 storage in depleted shale reservoirs
    Wang, Yan-Wei
    Dai, Zhen-Xue
    Wang, Gui-Sheng
    Chen, Li
    Xia, Yu-Zhou
    Zhou, Yu-Hao
    PETROLEUM SCIENCE, 2024, 21 (01) : 286 - 301
  • [24] Data-driven localized waves of a nonlinear partial differential equation via transformation and physics-informed neural network
    Li, Nan
    Wang, Ming
    NONLINEAR DYNAMICS, 2025, 113 (03) : 2559 - 2568
  • [25] Physics-Informed Neural Network Solution of Point Kinetics Equations for a Nuclear Reactor Digital Twin
    Prantikos, Konstantinos
    Tsoukalas, Lefteri H.
    Heifetz, Alexander
    ENERGIES, 2022, 15 (20)
  • [26] A physics-informed data-driven algorithm for ensemble forecast of turbulent
    Chen, Nan
    Qi, Di
    APPLIED MATHEMATICS AND COMPUTATION, 2024, 466
  • [27] Data-driven Static Equivalence with Physics-informed Koopman Operators
    Lin, Wei
    Zhao, Changhong
    Gao, Maosheng
    Chung, C. Y.
    CSEE JOURNAL OF POWER AND ENERGY SYSTEMS, 2024, 10 (01): : 432 - 438
  • [28] A Physics-Informed Data-Driven Approach for Boundary Layer Flows
    Figueredo, Vinicius Silva
    Olichevis Halila, Gustavo Luiz
    Magalhaes, Jose M., Jr.
    de Mendonca, Marcio Teixeira
    AIAA AVIATION FORUM AND ASCEND 2024, 2024,
  • [29] A comparison of physics-informed data-driven modeling architectures for motion
    Schirmann, Matthew L.
    Gose, James W.
    Collette, Matthew D.
    OCEAN ENGINEERING, 2023, 286
  • [30] Physics-Informed Data-Driven Safe and Optimal Control Design
    Niknejad, Nariman
    Modares, Hamidreza
    IEEE CONTROL SYSTEMS LETTERS, 2024, 8 : 285 - 290