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题名

Unified finite-volume physics informed neural networks to solve the heterogeneous partial differential equations

作者
发表日期
2024-07-08
DOI
发表期刊
ISSN
0950-7051
卷号295
摘要
The emerging physics informed neural network (PINN) has been recently applied to a wide range of mathematical problems. It is promising to precisely solve the partial differential equations (PDEs) in a fast, flexible manner. Whereas, PINN struggles with poor accuracy and costly computation in case of heterogeneous PDE coefficients. To mitigate these issues, a new PINN, which is known as the unified finite volume PINN (UFV-PINN), is proposed to unify the sub-domain decomposition, finite volume discretization, and conventional numerical solvers. The output by neural network (NN) over the boundaries of agglomerated sub-domains functions as boundary conditions (BCs) for UFV-PINN training. In this connection, the customized differentiable conventional numerical solver further solves the PDEs. The discrepancy between NN prediction and the conventional numerical solution within the sub-domains is taken as the novel training loss, enforcing the conservation law of PDE. For illustration, the Poisson and advection–diffusion equations (ADE) are solved, which are classical but still challenging to PINN in the presence of heterogeneity. Numerical experiments are conducted to compare the performance of the proposed UFV-PINN and the standard PINN, both in terms of accuracy and efficiency. Results indicate that UFV-PINN attains remarkable accuracy improvement with less computation time. Hessian spectrum analysis indicates that the loss Hessian matrix of UFV-PINN is more inclined to be positive definite, highlighting its superior performance over the standard PINN. It is the first time that the FV numerical solver is seamlessly embedded into the PINN training for performance improvement.
关键词
相关链接[Scopus记录]
收录类别
SCI ; EI
语种
英语
学校署名
其他
EI入藏号
20241715962514
EI主题词
Advection ; Boundary conditions ; Domain decomposition methods ; Finite volume method ; Spectrum analysis
EI分类号
Calculus:921.2 ; Numerical Methods:921.6
ESI学科分类
COMPUTER SCIENCE
Scopus记录号
2-s2.0-85190885150
来源库
Scopus
引用统计
被引频次[WOS]:1
成果类型期刊论文
条目标识符http://sustech.caswiz.com/handle/2SGJ60CL/760999
专题工学院_力学与航空航天工程系
作者单位
1.Department of Mechanical Engineering,The University of Hong Kong,7/F, Haking Wong Building, Pokfulam Road,Hong Kong
2.Department of Mechanics and Aerospace Engineering,Southern University of Science and Technology,Shenzhen,Guangdong,China
推荐引用方式
GB/T 7714
Mei,Di,Zhou,Kangcheng,Liu,Chun Ho. Unified finite-volume physics informed neural networks to solve the heterogeneous partial differential equations[J]. Knowledge-Based Systems,2024,295.
APA
Mei,Di,Zhou,Kangcheng,&Liu,Chun Ho.(2024).Unified finite-volume physics informed neural networks to solve the heterogeneous partial differential equations.Knowledge-Based Systems,295.
MLA
Mei,Di,et al."Unified finite-volume physics informed neural networks to solve the heterogeneous partial differential equations".Knowledge-Based Systems 295(2024).
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