Adaptive fractional physical information neural network based on PQI scheme for solving time-fractional partial differential equations

被引:0
作者
Yang, Ziqing [1 ]
Niu, Ruiping [1 ]
Chen, Miaomiao [2 ,3 ]
Jia, Hongen [1 ,4 ]
Li, Shengli [4 ,5 ]
机构
[1] Taiyuan Univ Technol, Coll Math, Taiyuan, Peoples R China
[2] Taiyuan Univ Technol, Coll Comp Sci & Technol, Coll Data Sci, Taiyuan, Peoples R China
[3] Jinzhong Univ, Dept Math, Jinzhong, Peoples R China
[4] Shanxi Key Lab Intelligent Optimizat Comp & Blockc, Taiyuan, Peoples R China
[5] Taiyuan Normal Univ, Coll Math & Stat, Jinzhong, Peoples R China
来源
ELECTRONIC RESEARCH ARCHIVE | 2024年 / 32卷 / 04期
关键词
adaptive learning rate; time-fractional partial differential equations; physical information neural network; composite activation function; FINITE INTEGRATION METHOD; DEEP LEARNING FRAMEWORK; APPROXIMATIONS; PROPAGATION; ALGORITHM; SPACE;
D O I
10.3934/era.2024122
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
In this paper, an accurate fractional physical information neural network with an adaptive learning rate (adaptive-fPINN-PQI) was first proposed for solving fractional partial differential equations. First, piecewise quadratic interpolation (PQI) in the sense of the Hadamard finite -part integral was introduced in the neural network to discretize the time -fractional derivative in the Caputo sense. Second, the adaptive learning rate residual network was constructed to keep the network from being stuck in the locally optimal solution, which automatically adjusts the weights of different loss terms, significantly balancing their gradients. Additionally, different from the traditional physical information neural networks, this neural network employs a new composite activation function based on the principle of Fourier transform instead of a single activation function, which significantly enhances the network's accuracy. Finally, numerous time -fractional diffusion and time -fractional phase -field equations were solved using the proposed adaptive-fPINN-PQI to demonstrate its high precision and efficiency.
引用
收藏
页码:2699 / 2727
页数:29
相关论文
共 56 条
[1]   A Generalized Definition of the Fractional Derivative with Applications [J].
Abu-Shady, M. ;
Kaabar, Mohammed K. A. .
MATHEMATICAL PROBLEMS IN ENGINEERING, 2021, 2021
[2]  
Ahmad B., 2017, Hadamard-type fractional differential equations in Inclusions and Inequalities
[3]   Learning data-driven discretizations for partial differential equations [J].
Bar-Sinai, Yohai ;
Hoyer, Stephan ;
Hickey, Jason ;
Brenner, Michael P. .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2019, 116 (31) :15344-15349
[4]   Machine Learning for Fluid Mechanics [J].
Brunton, Steven L. ;
Noack, Bernd R. ;
Koumoutsakos, Petros .
ANNUAL REVIEW OF FLUID MECHANICS, VOL 52, 2020, 52 :477-508
[5]   Discovering governing equations from data by sparse identification of nonlinear dynamical systems [J].
Brunton, Steven L. ;
Proctor, Joshua L. ;
Kutz, J. Nathan .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2016, 113 (15) :3932-3937
[6]   Adaptive multi-scale neural network with Resnet blocks for solving partial differential equations [J].
Chen, Miaomiao ;
Niu, Ruiping ;
Zheng, Wen .
NONLINEAR DYNAMICS, 2023, 111 (07) :6499-6518
[7]   FINITE ELEMENT METHOD FOR THE SPACE AND TIME FRACTIONAL FOKKER-PLANCK EQUATION [J].
Deng, Weihua .
SIAM JOURNAL ON NUMERICAL ANALYSIS, 2008, 47 (01) :204-226
[8]  
Diethelm K., 1997, ELECTRON T NUMER ANA, V5, P1
[9]   Deep convolutional neural networks for eigenvalue problems in mechanics [J].
Finol, David ;
Lu, Yan ;
Mahadevan, Vijay ;
Srivastava, Ankit .
INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN ENGINEERING, 2019, 118 (05) :258-275
[10]   Monte Carlo fPINNs: Deep learning method for forward and inverse problems involving high dimensional fractional partial differential equations [J].
Guo, Ling ;
Wu, Hao ;
Yu, Xiaochen ;
Zhou, Tao .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 400