2024
DOI: 10.1002/adts.202400589
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A Physics‐Driven GraphSAGE Method for Physical Field Simulations Described by Partial Differential Equations

Hang Hu,
Sidi Wu,
Guoxiong Cai
et al.

Abstract: Physics‐informed neural networks (PINNs) have successfully addressed various computational physics problems based on partial differential equations (PDEs). However, while tackling issues related to irregularities like singularities and oscillations, trained solutions usually suffer low accuracy. In addition, most current works only offer the trained solution for predetermined input parameters. If any change occurs in input parameters, transfer learning or retraining is required, and traditional numerical techn… Show more

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