Machine learning-based WENO5 scheme

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Machine learning-based WENO5 schemeFecha
2024-08-15Cita bibliográfica
X. Nogueira, J. Fernández-Fidalgo, L. Ramos, I. Couceiro, and L. Ramírez, "Machine learning-based WENO5 scheme", Computers & Mathematics with Applications, Vol. 168, 15 Aug. 2024, pp. 84-99, doi: 10.1016/j.camwa.2024.05.031
Resumen
[Abstract]: Machine learning (ML) is becoming a powerful tool in Computational Fluid Dynamics (CFD) to enhance the accuracy, efficiency, and automation of simulations. Currently, in the design of shock-capturing methods, there is still a heavy reliance on the expertise and scientific knowledge of each author, particularly in nonlinear components such as smoothness indicators and weighting functions. ML has the potential to reduce this dependency, since by leveraging large datasets, they can learn intricate patterns and make accurate predictions of these functions. In this work we present a neural network that compute the weighting functions in the WENO5 scheme. The proposed WENO5-NN scheme generalizes well for different resolutions, and in most of the cases tested, it outperforms the classical WENO5-JS scheme.
Palabras clave
Euler equations
Finite differences
Machine learning
Neural networks
WENO
Finite differences
Machine learning
Neural networks
WENO
Versión del editor
Derechos
Atribución 3.0 España
ISSN
0898-1221