Tackling the curse of dimensionality in fractional and tempered fractional PDEs with physics-informed neural networks

被引:0
|
作者
Hu, Zheyuan [1 ]
Kawaguchi, Kenji [1 ]
Zhang, Zhongqiang [2 ]
Karniadakis, George Em [3 ,4 ]
机构
[1] Natl Univ Singapore, 21 Lower Kent Ridge Rd, Singapore 119077, Singapore
[2] Worcester Polytech Inst, Dept Math Sci, Worcester, MA 01609 USA
[3] Brown Univ, Div Appl Math, 182 George St, Providence, RI 02912 USA
[4] Pacific Northwest Natl Lab, Adv Comp Math & Data Div, Richland, WA USA
基金
新加坡国家研究基金会;
关键词
Physics-informed neural networks; Curse of dimensionality; Fractional and tempered fractional PDEs; High-dimensional PDEs; LAPLACIAN;
D O I
10.1016/j.cma.2024.117448
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Fractional and tempered fractional partial differential equations (PDEs) are effective models of long-range interactions, anomalous diffusion, and non-local effects. Traditional numerical methods for these problems are mesh-based, thus struggling with the curse of dimensionality (CoD). Physics-informed neural networks (PINNs) offer a promising solution due to their universal approximation, generalization ability, and mesh-free training. In principle, Monte Carlo fractional PINN (MC-fPINN) estimates fractional derivatives using Monte Carlo methods and thus could lift CoD. However, this may cause significant variance and errors, hence affecting convergence; in addition, MC-fPINN is sensitive to hyperparameters. In general, numerical methods and specifically PINNs for tempered fractional PDEs are under-developed. Herein, we extend MC-fPINN to tempered fractional PDEs to address these issues, resulting in the Monte Carlo tempered fractional PINN (MC-tfPINN). To reduce possible high variance and errors from Monte Carlo sampling, we replace the one-dimensional (1D) Monte Carlo with 1D Gaussian quadrature, applicable to both MC-fPINN and MC-tfPINN. We validate our methods on various forward and inverse problems of fractional and tempered fractional PDEs, scaling up to 100,000 dimensions. Our improved MC-fPINN/MC-tfPINN using quadrature consistently outperforms the original versions in accuracy and convergence speed in very high dimensions. Code is available at https://github.com/zheyuanhu01/Tempered_Fractional_PINN.
引用
收藏
页数:13
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