Exact enforcement of temporal continuity in sequential physics-informed neural networks

被引:9
作者
Roy, Pratanu [1 ]
Castonguay, Stephen T. [2 ]
机构
[1] Lawrence Livermore Natl Lab, Atmospher Earth & Energy Div, 7000 East Ave, Livermore, CA 94550 USA
[2] Lawrence Livermore Natl Lab, Computat Engn Div, 7000 East Ave, Livermore, CA 94550 USA
关键词
Deep learning; Physics-informed neural networks (PINNs); Causality; Temporal continuity; Chaotic equations; DEEP LEARNING FRAMEWORK; MOTION;
D O I
10.1016/j.cma.2024.117197
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The use of deep learning methods in scientific computing represents a potential paradigm shift in engineering problem solving. One of the most prominent developments is PhysicsInformed Neural Networks (PINNs), in which neural networks are trained to satisfy partial differential equations (PDEs). While this method shows promise, the standard version has been shown to struggle in accurately predicting the dynamic behavior of time-dependent problems. To address this challenge, methods have been proposed that decompose the time domain into multiple segments, employing a distinct neural network in each segment and directly incorporating continuity between them in the loss function of the minimization problem. In this work we introduce a method to exactly enforce continuity between successive time segments via a solution ansatz. This hard constrained sequential PINN (HCS-PINN) method is simple to implement and eliminates the need for any loss terms associated with temporal continuity. The method is tested for a number of benchmark problems involving both linear and non-linear PDEs. Examples include various first order time dependent problems in which traditional PINNs struggle, namely advection, Allen-Cahn, and Korteweg-de Vries equations. Furthermore, second and third order time-dependent problems are demonstrated via wave and Jerky dynamics examples, respectively. Notably, the Jerky dynamics problem is chaotic, making the problem especially sensitive to temporal accuracy. The numerical experiments conducted with the proposed method demonstrated superior convergence and accuracy over both traditional PINNs and the soft-constrained counterparts.
引用
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页数:16
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