An inverse problem of determining the parameters in diffusion equations by using fractional physics-informed neural networks

被引:1
|
作者
Srati, M. [1 ]
Oulmelk, A. [2 ]
Afraites, L. [1 ]
Hadri, A. [3 ]
Zaky, M. A. [4 ,5 ,6 ]
Aldraiweesh, A. [5 ]
Hendy, A. S. [7 ,8 ,9 ]
机构
[1] Sultan Moulay Slimane Univ, EMI, FST Beni Mellal, Beni Mellal, Morocco
[2] Abdelmalek Essaadi Univ, Lab Math & Applicat, FST Tanger, Tetouan, Morocco
[3] Ibnou Zohr Univ, Lab SIV, Agadir, Morocco
[4] Imam Mohammad Ibn Saud Islamic Univ IMSIU, Coll Sci, Dept Math & Stat, Riyadh, Saudi Arabia
[5] King Saud Univ, Coll Educ, Educ Technol Dept, Riyadh, Saudi Arabia
[6] Natl Res Ctr, Dept Appl Math, Cairo 12622, Egypt
[7] Ural Fed Univ, Inst Nat Sci & Math, Dept Computat Math & Comp Sci, 19 Mira St, Ekaterinburg 620002, Russia
[8] Western Caspian Univ, Dept Mech & Math, Baku 1001, Azerbaijan
[9] Benha Univ, Fac Sci, Dept Math & Comp Sci, Banha 13511, Egypt
关键词
Inverse parameter problem; Time-fractional diffusion equations; Physics-informed neural network method; The gradient descent method; The alternating direction multiplier method; DeepONets method;
D O I
10.1016/j.apnum.2024.10.016
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
In this study, we address an inverse problem in nonlinear time-fractional diffusion equations using a deep neural network. The challenge arises from the equation's nonlinear behavior, the involvement of time-based fractional Caputo derivatives, and the need to estimate parameters influenced by space or the solution of the fractional PDE. Our solution involves a fractional physics-informed neural network (FPINN). Initially, we use FPINN to solve a straightforward problem. Then, we apply FPINN to the inverse problem of estimating parameter and model non- linearity. For the inverse problem, we enhance our method by including the mean square error of final observations in the FPINN's cost function. This adjustment helps effectively in tackling the unique challenges of the time-fractional diffusion equation. Numerical tests involving regular and singular examples demonstrate the effectiveness of the physics-informed neural network approach in accurately recovering parameters. We reinforce this finding through a numerical comparison with alternative methods such as the alternating direction multiplier method (ADMM), the gradient descent, and the DeepONets (deep operator networks) method.
引用
收藏
页码:189 / 213
页数:25
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