Physics-informed neural networks with hybrid Kolmogorov-Arnold network and augmented Lagrangian function for solving partial differential equations

被引:0
|
作者
Zhang, Zhaoyang [1 ]
Wang, Qingwang [1 ]
Zhang, Yinxing [1 ]
Shen, Tao [1 ]
Zhang, Weiyi [2 ]
机构
[1] Kunming Univ Sci & Technol, Fac Informat Engn & Automat, Kunming 650500, Peoples R China
[2] Suzhou Univ Sci & Technol, Sch Math Sci, Suzhou 215009, Peoples R China
来源
SCIENTIFIC REPORTS | 2025年 / 15卷 / 01期
基金
中国国家自然科学基金;
关键词
Kolmogorov-Arnold network; Physics-informed neural networks; Augmented Lagrangian function; Partial differential equations; FLOW;
D O I
10.1038/s41598-025-92900-1
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Physics-informed neural networks (PINNs) have emerged as a fundamental approach within deep learning for the resolution of partial differential equations (PDEs). Nevertheless, conventional multilayer perceptrons (MLPs) are characterized by a lack of interpretability and encounter the spectral bias problem, which diminishes their accuracy and interpretability when used as an approximation function within the diverse forms of PINNs. Moreover, these methods are susceptible to the over-inflation of penalty factors during optimization, potentially leading to pathological optimization with an imbalance between various constraints. In this study, we are inspired by the Kolmogorov-Arnold network (KAN) to address mathematical physics problems and introduce a hybrid encoder-decoder model to tackle these challenges, termed AL-PKAN. Specifically, the proposed model initially encodes the interdependencies of input sequences into a high-dimensional latent space through the gated recurrent unit (GRU) module. Subsequently, the KAN module is employed to disintegrate the multivariate function within the latent space into a set of trainable univariate activation functions, formulated as linear combinations of B-spline functions for the purpose of spline interpolation of the estimated function. Furthermore, we formulate an augmented Lagrangian function to redefine the loss function of the proposed model, which incorporates initial and boundary conditions into the Lagrangian multiplier terms, rendering the penalty factors and Lagrangian multipliers as learnable parameters that facilitate the dynamic modulation of the balance among various constraint terms. Ultimately, the proposed model exhibits remarkable accuracy and generalizability in a series of benchmark experiments, thereby highlighting the promising capabilities and application horizons of KAN within PINNs.
引用
收藏
页数:23
相关论文
共 50 条
  • [41] Designing Progressive Lenses Using Physics-Informed Neural Networks to Solve Partial Differential Equations
    Xiang, Huazhong
    Cheng, Hui
    Ding, Qihui
    Zheng, Zexi
    Chen, Jiabi
    Wang, Cheng
    Zhang, Dawei
    Zhuang, Songlin
    ACTA OPTICA SINICA, 2025, 45 (01)
  • [42] Physics-informed neural networks combined with polynomial interpolation to solve nonlinear partial differential equations
    Tang, Siping
    Feng, Xinlong
    Wu, Wei
    Xu, Hui
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2023, 132 : 48 - 62
  • [43] A trial solution for imposing boundary conditions of partial differential equations in physics-informed neural networks
    Manavi, Seyedalborz
    Fattahi, Ehsan
    Becker, Thomas
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 127
  • [44] Physics-informed machine learning for solving partial differential equations in porous media
    Shan, Liqun
    Liu, Chengqian
    Liu, Yanchang
    Tu, Yazhou
    Dong, Linyu
    Hei, Xiali
    ADVANCES IN GEO-ENERGY RESEARCH, 2023, 8 (01): : 37 - 44
  • [45] Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
    Raissi, M.
    Perdikaris, P.
    Karniadakis, G. E.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 378 : 686 - 707
  • [46] Physics-informed neural network based on a new adaptive gradient descent algorithm for solving partial differential equations of flow problems
    Li, Xiaojian
    Liu, Yuhao
    Liu, Zhengxian
    PHYSICS OF FLUIDS, 2023, 35 (06)
  • [48] MRF-PINN: a multi-receptive-field convolutional physics-informed neural network for solving partial differential equations
    Zhang, Shihong
    Zhang, Chi
    Han, Xiao
    Wang, Bosen
    COMPUTATIONAL MECHANICS, 2025, 75 (03) : 1137 - 1163
  • [49] Solving partial differential equation for atmospheric dispersion of radioactive material using physics-informed neural network
    Kim, Gibeom
    Heo, Gyunyoung
    NUCLEAR ENGINEERING AND TECHNOLOGY, 2023, 55 (06) : 2305 - 2314
  • [50] A novel optimization-based physics-informed neural network scheme for solving fractional differential equations
    Sivalingam S M
    Pushpendra Kumar
    V. Govindaraj
    Engineering with Computers, 2024, 40 : 855 - 865